Fintech and Cryptocurrency 9781119904816

FINTECH and CRYPTOCURRENCY Dive into the world of fintech and cryptocurrency through the engaging perspectives of this

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Table of contents :
Cover
Title Page
Copyright Page
Contents
Preface
Chapter 1 Evolution of Fintech in Financial Era
1.1 Introduction
1.2 Review of Literature
1.3 Objectives and Research Methodology
1.4 Working of FinTech
1.5 Tools and Techniques used in FinTech
1.6 Future Framework of FinTech
1.7 Evolution of FinTech in Financial World
1.8 Discussion and Conclusion
References
Webliography
Chapter 2 Digital Transformation of Financial Services in the Era of Fintech
2.1 Introduction
2.2 Review of Literature
2.2.1 Studies on FinTech
2.2.2 Studies on Digital Transformation
2.3 Digital Transformation: A Conceptual Overview
2.4 FinTech Ecosystem
2.5 Role of Fintech and Digital Transformation with Respect to Financial Services
2.6 Conclusion
References
Chapter 3 Reshaping Banking with Digital Technologies
3.1 Banking and Artificial Intelligence (AI)
3.1.1 Basic Algorithms and Machine Intellect
3.1.2 Artificial Common Intelligence
3.1.3 Ultra Smart AI
3.2 Fintech Evolution
3.3 AI Opportunities in Fintech
3.3.1 Automation
3.3.1.1 Robotic Process Automation (RPA)
3.3.1.2 iPaaS
3.3.1.3 iSaaS
3.3.1.4 Bots
3.3.1.5 Enterprise Automation
3.3.2 Improved Decision Making
3.3.3 Customization
3.4 Reshaping the Banking
3.4.1 Payments
3.4.2 Lending & AI-Based Credit Analysis
3.4.3 Wealth Management
3.4.3.1 Portfolio Management
3.4.3.2 Compliance Management
3.4.3.3 Robo-Advisory
3.5 Insurance
3.6 Challenges Faced by Fintech in Banking
3.6.1 Regulatory Compliance
3.6.2 Customer Trust
3.6.3 Blockchain Integration
3.7 Conclusion
References
Chapter 4 Adoption of Fintech: A Paradigm Shift Among Millennials as a Next Normal Behaviour
4.1 Introduction
4.1.1 Evolution of Fintech
4.1.2 Technology Innovation in the Financial Sector - Building a Digital Future
4.1.3 Taxonomy of Fintech Business Model
4.1.4 Fintech Ecosystem
4.1.5 Prepositions for Fintech Adoption
4.1.6 Challenges of the Fintech Industry
4.2 Statement of the Problem and Research Questions
4.3 Research Questions and Objectives
4.4 Conceptual Framework and Proposed Model
4.4.1 Conceptual Framework
4.4.2 The TAM Model
4.4.3 Proposed Model and Hypothesis Framed
4.5 Conclusion
Acknowledgement
References
Chapter 5 A Comprehensive Study of Cryptocurrencies as a Financial Asset: Major Topics and Market Trends
5.1 Introduction
5.2 Literature Review
5.3 Methodology
5.4 Findings
5.5 Cryptocurrencies as a Major Financial Asset
5.6 What is the Value of Cryptocurrencies? Current Market Trends
5.7 Conclusion
References
Chapter 6 Customers’ Satisfaction and Continuance Intention to Adopt Fintech Services: Developing Countries’ Perspective
6.1 Introduction
6.2 Understanding the Fintech Phenomenon in Developing Countries
6.3 Literature Review
6.3.1 Technology Acceptance Model (TAM)
6.3.2 Customer Satisfaction
6.3.3 Customer Innovativeness
6.3.4 Hedonic Motivation
6.3.5 Perceived Usefulness
6.3.6 Perceived Ease of Use
6.3.7 System Quality
6.3.8 Technology Self-Efficacy
6.3.9 Continuance Intention to Adopt
6.3.10 Hypothesis Development
6.3.11 Conceptual Model
6.4 Research Methodology
6.4.1 Sample and Data Collection
6.4.2 Measures of the Constructs
6.4.3 Validity and Reliability Assessment
6.5 Results
6.5.1 Demographic Profile of the Respondent
6.5.2 Structural Model Assessment
6.6 Discussion
6.7 Theoretical and Practical Implications
6.8 Conclusion
References
Chapter 7 Fintech Apps: An Integral Tool in Titivating Banking Operations
7.1 Introduction
7.2 Objectives
7.3 Statement of the Problem
7.4 Need for the Study
7.5 Review of Literature
7.6 Proposed Model
7.7 Lending APPS
7.8 Investment Apps
7.9 Payment Apps
7.10 Insurance Apps
7.11 Persuading Factors that Increase the Usage of Fin-Tech Apps
7.12 Methodology
7.13 Results and Discussions
7.14 Multiple Linear Regression
7.15 Structural Equation Modelling
7.16 Conclusion
References
Chapter 8 Analytical Study of Fin-Tech in Banking: A Utility Model
8.1 Introduction
8.2 Literature Analysis and Development of Hypothesis
8.2.1 Perceived Utility (PU) and Willingness to Adopt Fin-Tech (WUF) Services
8.2.2 Sensible Usability (SU) and Willingness to Use Fin-Tech (WUF) Services
8.2.3 Customer Belief (CU) and Willingness to Use Fin-Tech (WUF) Services
8.2.4 Social Implications (SI) and Willingness to Use Fin-Tech (WUF)Services
8.3 Research Design
8.4 Empirical Results
8.4.1 Effect of Perceived Utility of Fin-Tech Services (PU) on the Willingness of Customers to Use Fin-Tech (ICUF) Services
8.4.2 Effect of Perceived Ease of Use of Fin-Tech Services (PEU) on the Willingness of Customers to Use Fin-Tech (ICUF) Services
8.4.3 Effect of Customer Belief in Fin-Tech Services (CU) on the Willingness of Customers to Utilize Fin-Tech (ICUF) Services
8.4.4 Social Influence (SI) Impact on the Willingness of Customers to Utilize Fin-Tech (ICUF) Services
8.5 Conclusion
References
Chapter 9 Is Digital Currency a Payment Disruption Mechanism?
9.1 Introduction
9.2 Review of Literature
9.3 Methodology and Sampling
9.4 Results and Discussion
9.4.1 Financial Literacy & Inclusion
9.4.2 Infrastructure
9.4.3 Technical Know-How
9.4.4 Trust and Belief
9.5 Acceptance of CBDC
9.6 Conclusion
References
Chapter 10 Investor Sentiment Driving Crypto-Trade in India
10.1 Introduction
10.2 Review of Literature
10.2.1 Finance & Sentiments
10.2.2 Cryptocurrency
10.2.3 Addiction or Analysis?
10.2.4 Fear of Missing Out (FOMO)
10.3 Research Methodology
10.3.1 Aim of the Study
10.3.2 Objectives of the Study
10.3.3 Sampling Methodology & Data Analysis
10.3.4 Limitations of the Study
10.4 Data Analysis & Interpretation
10.5 Conclusions, Suggestions & Recommendations
References
Chapter 11 Applications of Digital Technologies and Artificial Intelligence in Cryptocurrency - A Multi-Dimensional Perspective
11.1 Introduction
11.2 State-of-the-Art Review
11.3 Application Areas of Cryptocurrencies
11.3.1 Fundraising and Investments
11.3.2 Freight Transportation and Travel
11.3.3 Education
11.3.4 Publication and Advertising as Means of Communication
11.3.5 E-Commerce and Entertainment
11.3.6 Real Estate and Stock Market
11.3.7 Trained Financial Planners
11.4 Financial Transaction Using Blockchain Technology
11.4.1 Introduction
11.4.2 Technology Acceptance Model
11.4.3 External Constructs
11.4.3.1 Trust (T)
11.4.3.2 Support (RS) for Regulatory Standards
11.4.3.3 Experience (E)
11.4.3.4 Social Influence (SI)
11.4.3.5 Design (D)
11.4.4 Summary
11.5 An Analysis of Cryptocurrency Mining Using a Hybrid Approach
11.5.1 Introduction
11.5.2 Cryptocurrency Mining Strategies
11.5.3 Summary and Discussion
11.6 Forecasting Cryptocurrency Price Using Convolutional Neural Networks
11.6.1 Introduction
11.6.2 Assistive Technologies in Machine Learning and Deep Learning
11.6.3 Convolutional Neural Networks with Weighted and Attentive Memory Channels
11.6.3.1 Attentive Memory Module
11.6.3.2 Convolution & Pooling Module
11.6.4 Summary and Discussion
11.7 Blockchain Technology and Cryptocurrencies for the Collaborative Economy
11.7.1 Introduction
11.7.2 Collaborative Economy and Digital Platforms
11.7.3 Emergence of Collaborative Consumption
11.7.3.1 Promoting the Diffusion of Collaborative Practices
11.7.4 Summary
11.8 Conclusions
References
Chapter 12 A Study on the Influence of Personality on Savings and Investment in Cryptos
12.1 Introduction
12.2 Literature Review
12.2.1 Openness to Experience
12.2.2 Conscientiousness
12.2.3 Extroversion
12.2.4 Aggreeableness
12.2.5 Neuroticism
12.3 Objectives of the Research
12.4 Methodolgy
12.5 Discussion
References
Chapter 13 Deep Neural Network in Security: A Novel Robust CAPTCHA Model
13.1 Introduction
13.2 Literature Review
13.2.1 Convolutional Neural Networks
13.2.2 Transfer Learning
13.3 Proposed Approach
13.3.1 Data Pre-Processing and Exploratory Analysis
13.3.2 Data Acquisition
13.4 Results and Discussions
13.4.1 CNN
13.4.2 DenseNet
13.4.3 MobileNet
13.4.4 VGG16
13.5 Conclusion
References
Chapter 14 Customer’s Perception of Voice Bot Assistance in the Banking Industry in Malaysia
14.1 Introduction
14.2 Problem Statement
14.3 What is a Voice Bot?
14.3.1 Characteristics of a Voice Bot
14.3.2 Why are Voice Bots Becoming Popular?
14.3.3 Benefits of a Voice Bot from the Bank’s Perspective
14.3.4 Benefits of a Voice Bot from the Customer’s Perspective
14.3.5 Opportunities for Voice Bots in Banking
14.3.6 Use Cases: Bank Voice Bots Currently Available Around the World
14.4 Call to Action
14.5 Literature Review
14.6 Research Methodology
14.7 Descriptive Analysis
14.8 Discussion and Conclusion
References
Chapter 15 Application of Technology Acceptance Model (TAM) in Fintech Mobile Applications for Banking
15.1 Introduction
15.1.1 Significance of the Study
15.1.2 Research Objectives
15.1.3 Hypotheses of the Study
15.1.3.1 Perceived Usefulness Toward the Usage of Fintech
15.1.3.2 Brand Image Toward the Usage of Fintech
15.1.3.3 Perceived Risks Toward the Usage of Fintech
15.2 Methods and Measures
15.2.1 Instrument Development
15.3 Results
15.3.1 Demographic Profile of the Respondents
15.3.2 Factors Influencing Fintech under Technology Acceptance Model (TAM)
15.3.2.1 Prominent Factors under Technology Acceptance Model (TAM) that Influence the Usage of Fintech
15.3.3 Technology Acceptance Model and the Usage of Fintech
15.3.3.1 Perceived Usefulness Toward the Usage of Fintech
15.3.3.2 Brand Image Toward the Usage of Fintech
15.3.3.3 Perceived Risks Toward the Usage of Fintech
15.4 Discussion
15.5 Conclusion
References
Chapter 16 Upsurge of Robo Advisors: Integrating Customer Acceptance
16.1 Introduction
16.2 Chatbots
16.2.1 Benefits of Using Chatbots in Banks
16.3 Robo-Advisor
16.3.1 Robo-Adviser – A Brief History
16.3.2 Historic Account of Robo Advisors
16.3.3 Robo-Advisor Versus FA (Financial Advisor)
16.3.4 Robo Advisors in Market
16.3.5 How Robo-Advisors Work?
16.3.6 Types of Robo-Advisor
16.3.7 Top Robo-Advisors
16.3.8 Points to be Consider while Selection of Robo-Advisor
16.3.9 Benefits of Robo-Advisors
16.3.10 Limitations of Robo-Advisors
16.4 Acceptance of Robo-Advisor
16.4.1 Theoretical Background and Research Propositions
16.4.2 A Glimpse of Earlier Research Studies
16.4.3 Methodology and Hypothesis
16.4.4 Collection of Data
16.4.5 Hypotheses Testing
16.5 Conclusion
References
Chapter 17 Super Apps: The Natural Progression in Fin-Tech
17.1 Introduction
17.2 Journey from an App to a Super App
17.3 Super App vs. A Vertically Integrated App
17.4 Architecture and Design of Super Apps
17.4.1 Monolithic Architecture
17.4.2 Modular Architecture
17.4.3 Microservices Architecture
17.5 Business Models of Super Apps
17.6 The Super App Market Space and the Business Models
17.6.1 WeChat
17.6.2 Alipay
17.6.3 Grab
17.6.4 Paytm
17.6.5 The Latest Entrant: Tata Neu
17.6.6 Other Players
17.7 Factors Contributing to the Success of Super Apps
17.8 Super Apps in Fin-Tech and their Role in the Financial Services Segment
17.9 Role of Super Apps in Financial Inclusion
17.10 Benefits of Super Apps in the Financial Services Sector
17.10.1 Economies of Scale & Cost of Financial Intermediation
17.10.2 Size & Speed of Product and Service Offerings
17.10.3 The Power of Data and the Speed of Responsiveness
17.11 Risks due to Super Apps in the Financial System
17.11.1 Financial Stability
17.11.2 Market Concentration
17.11.3 Dis-Intermediation of Banks from Customer
17.12 Regulatory Measures to Mitigate the Risks
17.13 The Future of Super Apps
17.14 Conclusion
References
Index
EULA
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Fintech and Cryptocurrency

Scrivener Publishing 100 Cummings Center, Suite 541J Beverly, MA 01915-6106 Publishers at Scrivener Martin Scrivener ([email protected]) Phillip Carmical ([email protected])

Fintech and Cryptocurrency

Edited by

Mohd Naved V. Ajantha Devi and

Aditya Kumar Gupta

This edition first published 2023 by John Wiley & Sons, Inc., 111 River Street, Hoboken, NJ 07030, USA and Scrivener Publishing LLC, 100 Cummings Center, Suite 541J, Beverly, MA 01915, USA © 2023 Scrivener Publishing LLC For more information about Scrivener publications please visit www.scrivenerpublishing.com. All rights reserved. No part of this publication may be reproduced, stored in a retrieval system, or transmitted, in any form or by any means, electronic, mechanical, photocopying, recording, or otherwise, except as permitted by law. Advice on how to obtain permission to reuse material from this title is available at http://www.wiley.com/go/permissions. Wiley Global Headquarters 111 River Street, Hoboken, NJ 07030, USA For details of our global editorial offices, customer services, and more information about Wiley products visit us at www.wiley.com. Limit of Liability/Disclaimer of Warranty While the publisher and authors have used their best efforts in preparing this work, they make no rep­ resentations or warranties with respect to the accuracy or completeness of the contents of this work and specifically disclaim all warranties, including without limitation any implied warranties of merchant-­ ability or fitness for a particular purpose. No warranty may be created or extended by sales representa­ tives, written sales materials, or promotional statements for this work. The fact that an organization, website, or product is referred to in this work as a citation and/or potential source of further informa­ tion does not mean that the publisher and authors endorse the information or services the organiza­ tion, website, or product may provide or recommendations it may make. This work is sold with the understanding that the publisher is not engaged in rendering professional services. The advice and strategies contained herein may not be suitable for your situation. You should consult with a specialist where appropriate. Neither the publisher nor authors shall be liable for any loss of profit or any other commercial damages, including but not limited to special, incidental, consequential, or other damages. Further, readers should be aware that websites listed in this work may have changed or disappeared between when this work was written and when it is read. Library of Congress Cataloging-in-Publication Data ISBN 978-1-119-90481-6 Front cover images supplied by Pixabay.com Cover design by Russell Richardson Set in size of 11pt and Minion Pro by Manila Typesetting Company, Makati, Philippines Printed in the USA 10 9 8 7 6 5 4 3 2 1

Contents Preface xvii 1 Evolution of Fintech in Financial Era Tanya Kumar and Satveer Kaur 1.1 Introduction 1.2 Review of Literature 1.3 Objectives and Research Methodology 1.4 Working of FinTech 1.5 Tools and Techniques used in FinTech 1.6 Future Framework of FinTech 1.7 Evolution of FinTech in Financial World 1.8 Discussion and Conclusion References Webliography

1 1 2 4 4 5 7 7 9 9 11

2 Digital Transformation of Financial Services in the Era of Fintech 13 Ayesha Siddiqui, Arti Yadav and Najib H.S. Farhan 2.1 Introduction 13 2.2 Review of Literature 16 2.2.1 Studies on FinTech 16 2.2.2 Studies on Digital Transformation 18 2.3 Digital Transformation: A Conceptual Overview 20 2.4 FinTech Ecosystem 21 2.5 Role of Fintech and Digital Transformation with Respect to Financial Services 24 2.6 Conclusion 27 References 27 3 Reshaping Banking with Digital Technologies Ankita Srivastava and Aishwarya Kumar 3.1 Banking and Artificial Intelligence (AI) 3.1.1 Basic Algorithms and Machine Intellect

35 35 37 v

vi  Contents

3.2 3.3

3.4

3.5 3.6

3.7

3.1.2 Artificial Common Intelligence 3.1.3 Ultra Smart AI Fintech Evolution AI Opportunities in Fintech 3.3.1 Automation 3.3.1.1 Robotic Process Automation (RPA) 3.3.1.2 iPaaS 3.3.1.3 iSaaS 3.3.1.4 Bots 3.3.1.5 Enterprise Automation 3.3.2 Improved Decision Making 3.3.3 Customization Reshaping the Banking 3.4.1 Payments 3.4.2 Lending & AI-Based Credit Analysis 3.4.3 Wealth Management 3.4.3.1 Portfolio Management 3.4.3.2 Compliance Management 3.4.3.3 Robo-Advisory Insurance Challenges Faced by Fintech in Banking 3.6.1 Regulatory Compliance 3.6.2 Customer Trust 3.6.3 Blockchain Integration Conclusion References

4 Adoption of Fintech: A Paradigm Shift Among Millennials as a Next Normal Behaviour Pushpa A., Jaheer Mukthar K. P., Ramya U., Edwin Hernan Ramirez Asis and William Rene Dextre Martinez 4.1 Introduction 4.1.1 Evolution of Fintech 4.1.2 Technology Innovation in the Financial Sector Building a Digital Future 4.1.3 Taxonomy of Fintech Business Model 4.1.4 Fintech Ecosystem 4.1.5 Prepositions for Fintech Adoption 4.1.6 Challenges of the Fintech Industry 4.2 Statement of the Problem and Research Questions 4.3 Research Questions and Objectives

37 37 38 40 40 40 41 41 41 41 42 43 44 44 46 48 48 49 50 52 53 53 53 53 54 54 59 60 61 63 66 69 72 74 75 76

Contents  vii 4.4 Conceptual Framework and Proposed Model 4.4.1 Conceptual Framework 4.4.2 The TAM Model 4.4.3 Proposed Model and Hypothesis Framed 4.5 Conclusion Acknowledgement References 5 A Comprehensive Study of Cryptocurrencies as a Financial Asset: Major Topics and Market Trends Gioia Arnone and Ajantha Devi Vairamani 5.1 Introduction 5.2 Literature Review 5.3 Methodology 5.4 Findings 5.5 Cryptocurrencies as a Major Financial Asset 5.6 What is the Value of Cryptocurrencies? Current Market Trends 5.7 Conclusion References

77 77 77 79 83 83 83 91 91 92 95 96 97 98 100 101

6 Customers’ Satisfaction and Continuance Intention to Adopt Fintech Services: Developing Countries’ Perspective 105 Song Bee Lian and Liew Chee Yoong 6.1 Introduction 106 6.2 Understanding the Fintech Phenomenon in Developing Countries 108 6.3 Literature Review 109 6.3.1 Technology Acceptance Model (TAM) 109 6.3.2 Customer Satisfaction 110 6.3.3 Customer Innovativeness 110 6.3.4 Hedonic Motivation 111 6.3.5 Perceived Usefulness 111 6.3.6 Perceived Ease of Use 112 6.3.7 System Quality 113 6.3.8 Technology Self-Efficacy 113 6.3.9 Continuance Intention to Adopt 114 6.3.10 Hypothesis Development 114 6.3.11 Conceptual Model 115

viii  Contents 6.4 Research Methodology 6.4.1 Sample and Data Collection 6.4.2 Measures of the Constructs 6.4.3 Validity and Reliability Assessment 6.5 Results 6.5.1 Demographic Profile of the Respondent 6.5.2 Structural Model Assessment 6.6 Discussion 6.7 Theoretical and Practical Implications 6.8 Conclusion References 7 Fintech Apps: An Integral Tool in Titivating Banking Operations Arun Prakash A., Leelavathi R., Rupashree R. and V.G. Jisha 7.1 Introduction 7.2 Objectives 7.3 Statement of the Problem 7.4 Need for the Study 7.5 Review of Literature 7.6 Proposed Model 7.7 Lending APPS 7.8 Investment Apps 7.9 Payment Apps 7.10 Insurance Apps 7.11 Persuading Factors that Increase the Usage of Fin-Tech Apps 7.12 Methodology 7.13 Results and Discussions 7.14 Multiple Linear Regression 7.15 Structural Equation Modelling 7.16 Conclusion References 8 Analytical Study of Fin-Tech in Banking: A Utility Model Neha Kamboj and Mamta Sharma 8.1 Introduction 8.2 Literature Analysis and Development of Hypothesis 8.2.1 Perceived Utility (PU) and Willingness to Adopt Fin-Tech (WUF) Services 8.2.2 Sensible Usability (SU) and Willingness to Use Fin-Tech (WUF) Services

115 115 116 116 120 120 120 122 126 127 128 137 138 142 143 144 144 145 145 145 147 148 149 150 151 152 154 155 155 157 158 160 161 161

Contents  ix 8.2.3 Customer Belief (CU) and Willingness to Use Fin-Tech (WUF) Services 8.2.4 Social Implications (SI) and Willingness to Use Fin-Tech (WUF)Services 8.3 Research Design 8.4 Empirical Results 8.4.1 Effect of Perceived Utility of Fin-Tech Services (PU) on the Willingness of Customers to Use Fin-Tech (ICUF) Services 8.4.2 Effect of Perceived Ease of Use of Fin-Tech Services (PEU) on the Willingness of Customers to Use Fin-Tech (ICUF) Services 8.4.3 Effect of Customer Belief in Fin-Tech Services (CU) on the Willingness of Customers to Utilize Fin-Tech (ICUF) Services 8.4.4 Social Influence (SI) Impact on the Willingness of Customers to Utilize Fin-Tech (ICUF) Services 8.5 Conclusion References

162 162 163 165 168 168 168 169 169 170

9 Is Digital Currency a Payment Disruption Mechanism? Vanishree Mysore Ramkrishna and Vyshnavi Loganathan 9.1 Introduction 9.2 Review of Literature 9.3 Methodology and Sampling 9.4 Results and Discussion 9.4.1 Financial Literacy & Inclusion 9.4.2 Infrastructure 9.4.3 Technical Know-How 9.4.4 Trust and Belief 9.5 Acceptance of CBDC 9.6 Conclusion References

173

10 Investor Sentiment Driving Crypto-Trade in India Sushant Waghmare and Dipesh Uike 10.1 Introduction 10.2 Review of Literature 10.2.1 Finance & Sentiments 10.2.2 Cryptocurrency 10.2.3 Addiction or Analysis? 10.2.4 Fear of Missing Out (FOMO)

193

173 175 177 179 180 181 183 184 185 188 190

194 195 195 196 197 198

x  Contents 10.3 Research Methodology 10.3.1 Aim of the Study 10.3.2 Objectives of the Study 10.3.3 Sampling Methodology & Data Analysis 10.3.4 Limitations of the Study 10.4 Data Analysis & Interpretation 10.5 Conclusions, Suggestions & Recommendations References

200 200 200 200 201 201 214 217

11 Applications of Digital Technologies and Artificial Intelligence in Cryptocurrency - A Multi-Dimensional Perspective 221 W. Jaisingh, Preethi N. and R. K. Kavitha 11.1 Introduction 222 11.2 State-of-the-Art Review 223 11.3 Application Areas of Cryptocurrencies 224 11.3.1 Fundraising and Investments 224 11.3.2 Freight Transportation and Travel 226 11.3.3 Education 227 11.3.4 Publication and Advertising as Means of Communication 227 11.3.5 E-Commerce and Entertainment 228 11.3.6 Real Estate and Stock Market 228 11.3.7 Trained Financial Planners 228 11.4 Financial Transaction Using Blockchain Technology 229 11.4.1 Introduction 229 11.4.2 Technology Acceptance Model 230 11.4.3 External Constructs 230 11.4.3.1 Trust (T) 230 11.4.3.2 Support (RS) for Regulatory Standards 232 11.4.3.3 Experience (E) 232 11.4.3.4 Social Influence (SI) 233 11.4.3.5 Design (D) 233 11.4.4 Summary 234 11.5 An Analysis of Cryptocurrency Mining Using a Hybrid Approach 234 11.5.1 Introduction 234 11.5.2 Cryptocurrency Mining Strategies 235 11.5.3 Summary and Discussion 236 11.6 Forecasting Cryptocurrency Price Using Convolutional Neural Networks 237 11.6.1 Introduction 237

Contents  xi 11.6.2 Assistive Technologies in Machine Learning and Deep Learning 238 11.6.3 Convolutional Neural Networks with Weighted and Attentive Memory Channels 238 11.6.3.1 Attentive Memory Module 239 11.6.3.2 Convolution & Pooling Module 239 11.6.4 Summary and Discussion 239 11.7 Blockchain Technology and Cryptocurrencies for the Collaborative Economy 240 11.7.1 Introduction 240 11.7.2 Collaborative Economy and Digital Platforms 241 11.7.3 Emergence of Collaborative Consumption 242 11.7.3.1 Promoting the Diffusion of Collaborative Practices 242 11.7.4 Summary 242 11.8 Conclusions 243 References 243 12 A Study on the Influence of Personality on Savings and Investment in Cryptos K. Manimekalai, T. Satheeshkumar and G. Manokaran 12.1 Introduction 12.2 Literature Review 12.2.1 Openness to Experience 12.2.2 Conscientiousness 12.2.3 Extroversion 12.2.4 Aggreeableness 12.2.5 Neuroticism 12.3 Objectives of the Research 12.4 Methodolgy 12.5 Discussion References

251 252 253 254 256 257 258 259 260 260 268 269

13 Deep Neural Network in Security: A Novel Robust CAPTCHA Model 277 Manasi Chhibber, Rashmi Gandhi, Aakanshi Gupta and Ashok Kumar Yadav 13.1 Introduction 277 13.2 Literature Review 279 13.2.1 Convolutional Neural Networks 280 13.2.2 Transfer Learning 281

xii  Contents 13.3 Proposed Approach 13.3.1 Data Pre-Processing and Exploratory Analysis 13.3.2 Data Acquisition 13.4 Results and Discussions 13.4.1 CNN 13.4.2 DenseNet 13.4.3 MobileNet 13.4.4 VGG16 13.5 Conclusion References 14 Customer’s Perception of Voice Bot Assistance in the Banking Industry in Malaysia Manimekalai Jambulingam, Indhumathi Sinnasamy

283 283 283 289 289 292 295 297 300 300 303

and Magiswary Dorasamy

14.1 Introduction 303 14.2 Problem Statement 304 14.3 What is a Voice Bot? 305 14.3.1 Characteristics of a Voice Bot 307 14.3.2 Why are Voice Bots Becoming Popular? 308 14.3.3 Benefits of a Voice Bot from the Bank’s Perspective 309 14.3.4 Benefits of a Voice Bot from the Customer’s Perspective 311 14.3.5 Opportunities for Voice Bots in Banking 312 14.3.6 Use Cases: Bank Voice Bots Currently Available Around the World 313 14.4 Call to Action 315 14.5 Literature Review 316 14.6 Research Methodology 317 14.7 Descriptive Analysis 318 14.8 Discussion and Conclusion 321 References 322 15 Application of Technology Acceptance Model (TAM) in Fintech Mobile Applications for Banking Tabitha Durai and F. Lallawmawmi 15.1 Introduction 15.1.1 Significance of the Study 15.1.2 Research Objectives 15.1.3 Hypotheses of the Study

325 326 331 331 332

Contents  xiii 15.1.3.1

Perceived Usefulness Toward the Usage of Fintech 15.1.3.2 Brand Image Toward the Usage of Fintech 15.1.3.3 Perceived Risks Toward the Usage of Fintech 15.2 Methods and Measures 15.2.1 Instrument Development 15.3 Results 15.3.1 Demographic Profile of the Respondents 15.3.2 Factors Influencing Fintech under Technology Acceptance Model (TAM) 15.3.2.1 Prominent Factors under Technology Acceptance Model (TAM) that Influence the Usage of Fintech 15.3.3 Technology Acceptance Model and the Usage of Fintech 15.3.3.1 Perceived Usefulness Toward the Usage of Fintech 15.3.3.2 Brand Image Toward the Usage of Fintech 15.3.3.3 Perceived Risks Toward the Usage of Fintech 15.4 Discussion 15.5 Conclusion References 16 Upsurge of Robo Advisors: Integrating Customer Acceptance C. Nagadeepa, Reenu Mohan, Antonio Peregrino Huaman Osorio and Willian Josue Fernandez Celestino 16.1 Introduction 16.2 Chatbots 16.2.1 Benefits of Using Chatbots in Banks 16.3 Robo-Advisor 16.3.1 Robo-Adviser – A Brief History 16.3.2 Historic Account of Robo Advisors 16.3.3 Robo-Advisor Versus FA (Financial Advisor) 16.3.4 Robo Advisors in Market 16.3.5 How Robo-Advisors Work? 16.3.6 Types of Robo-Advisor 16.3.7 Top Robo-Advisors

332 333 333 334 335 336 336 338 340 340 340 342 343 344 346 347 351 351 355 355 356 357 358 359 359 364 365 367

xiv  Contents 16.3.8 Points to be Consider while Selection of Robo-Advisor 371 16.3.9 Benefits of Robo-Advisors 372 16.3.10 Limitations of Robo-Advisors 373 16.4 Acceptance of Robo-Advisor 374 16.4.1 Theoretical Background and Research Propositions 374 16.4.2 A Glimpse of Earlier Research Studies 375 16.4.3 Methodology and Hypothesis 376 16.4.4 Collection of Data 377 16.4.5 Hypotheses Testing 377 16.5 Conclusion 379 References 379 17 Super Apps: The Natural Progression in Fin-Tech 383 Kavitha D., Uma Maheswari B. and Sujatha R. 17.1 Introduction 383 17.2 Journey from an App to a Super App 385 17.3 Super App vs. A Vertically Integrated App 385 17.4 Architecture and Design of Super Apps 386 17.4.1 Monolithic Architecture 388 17.4.2 Modular Architecture 388 17.4.3 Microservices Architecture 389 17.5 Business Models of Super Apps 390 17.6 The Super App Market Space and the Business Models 391 17.6.1 WeChat 391 17.6.2 Alipay 393 17.6.3 Grab 394 17.6.4 Paytm 395 17.6.5 The Latest Entrant: Tata Neu 396 17.6.6 Other Players 396 17.7 Factors Contributing to the Success of Super Apps 397 17.8 Super Apps in Fin-Tech and their Role in the Financial Services Segment 400 17.9 Role of Super Apps in Financial Inclusion 403 17.10 Benefits of Super Apps in the Financial Services Sector 405 17.10.1 Economies of Scale & Cost of Financial Intermediation 405 17.10.2 Size & Speed of Product and Service Offerings 406 17.10.3 The Power of Data and the Speed of Responsiveness 406 17.11 Risks due to Super Apps in the Financial System 406

Contents  xv 17.11.1 Financial Stability 17.11.2 Market Concentration 17.11.3 Dis-Intermediation of Banks from Customer 17.12 Regulatory Measures to Mitigate the Risks 17.13 The Future of Super Apps 17.14 Conclusion References

407 407 408 408 408 410 411

Index 413

Preface The rise of cryptocurrency and financial technology (fintech) has drastically changed the way people think and use money. This new type of innovation involves the use of software and other technologies to improve and automate the financial services industry. Some of these include online lending platforms and financial software. Unlike traditional financial transactions, which are usually controlled by a central bank or government, cryptocurrencies use cryptography to ensure that all transactions are secure. This type of digital currency is decentralized. The rise of cryptocurrency and fintech has been attributed to the technological advancements that have occurred in the financial industry over the past decade. These changes have led to the emergence of numerous startups that have disrupted the traditional financial sector. The rise of cryptocurrencies has raised various questions about the role of central bank and the traditional currency. Despite the various advantages of cryptocurrencies and fintech, they still have a number of risks that they can potentially affect. For instance, due to the lack of regulation, the lack of proper supervision has led to the emergence and manipulation of market prices and fraud. In addition, the rapid pace of innovation in the financial industry has raised concerns that these technologies could potentially displace thousands of jobs. Due to the rapid emergence and evolution of cryptocurrencies and fintech, policymakers and the public have become more aware of the potential impact of these innovations on the financial industry. This book explores the history and development of these technologies. It also aims to provide an overview of the multiple potential uses of these innovations. In this book, we have investigated the various players in the financial industry and examine the potential impacts of these innovations on the economy and consumers. We will also talk about the challenges and risks that have emerged in the space. This book aims to provide a comprehensive understanding of the various aspects of cryptocurrency and financial technology. It will also help financial professionals and technology enthusiasts xvii

xviii  Preface understand the potential of these innovations. Digital currencies, decentralization of money, and the growth of new technologies like blockchain, the Internet of Things, and machine learning have produced new opportunities and difficulties for banking and finance, as well as users of these services in electronic commerce. New banking and finance technologies may improve operational efficiency, risk management, compliance, and client pleasure, but they can decrease barriers and introduce new concerns, such as cybersecurity risk. Cryptocurrencies with smart contracts for payments and trading, as well as AI systems with adaptive algorithms that allow picture and speech recognition, expert judgement, group categorization, and forecasting in a variety of fields, are instances of increased automation. Simultaneously, the potentials pose risks and raise regulatory concerns. The rise of blockchain technology and its widespread use have had a significant impact on the operation and management of digital systems. At the same time, researchers and practitioners have paid close attention to digital finance. Blockchain’s first applications were limited to the production of digital currency, but it has now been expanded to include financial and commercial applications. Innovative digital finance has had a huge impact on business and society since it has been extensively adopted by businesses and consumers (e.g., digital payment, crowdfunding, digital lending, supply chain finance, and robotic consulting). The Chapter 1 “Evolution of Fintech in Financial Era” discuss FinTech enables the individual to take appropriate decisions regarding financial services during a reasonable period of time and can be used by individuals as well as businesses for tracking and managing the financial needs. The aim of the paper is to study the various related concepts of FinTech as well as how it works in financial era. The focus is also given to analyze various tools and techniques which can be used in this innovative financial technique. The estimation of future framework regarding FinTech is also incorporated in the study along with its evolution in financial era. The study will provide deep insight into FinTech as it is a U-Turn for the banking mechanism and will play a major role transforming the financial world digitally. The evolution of financial technology, or fintech, has had a significant impact on the financial industry in recent years. From mobile banking to cryptocurrency, fintech has revolutionized the way we access and use financial services. In this chapter, we will explore the history and development of fintech, as well as its current and future role in the financial industry. We will also delve into the potential challenges and opportunities that fintech presents for traditional financial institutions, as well as for consumers and businesses. This chapter aims to provide a comprehensive overview

Preface  xix of the evolution of fintech in the financial era, and to shed light on its potential to shape the future of finance. Chapter 2 “Digital Transformation of Financial Services in the Era of Fintech” discuss a conceptual framework highlighting the growth of the financial technology sector. It starts with the concept of digital transformation and how it has impacted the various stakeholders. Our conceptual framework allows us to define FinTech- financial technology and then construct a taxonomy of the various FinTech domains. We apply the notion of digital transformation to the financial sector to better understand where the FinTech concept began and, where it is headed, how Digital transformation has acted as a significant change agent in the fintech sector. Fintech is one of the most critical developments in the financial sector with fast expansion, fueled mainly by favorable legislation, sharing economy and information technology which has created innovative value creation and appropriation pathways for the financial industry. In most countries worldwide, Fintech is rapidly becoming the go-to financial system. Chapter 3 “Reshaping Banking with Digital Technologies” The banking sector has gone a long way to come into its present form. It is still undergoing changes due to the introduction of various technologies. The digitization in the year 2000 was a step hard to move but now the people are more open to changes and willing to adopt technologies for the sake of convenience. This chapter discusses the banking sector’s adoption of Artificial Intelligence (AI), the evolution of fintech, the changes brought by fintech in banking industry and the challenges which the fintech is facing nowadays. The chapter discusses in-depth, the deployment of AI tools like automation RPA, iSaaS and bots. It focuses the areas in banking where AI applications are used and how. Though the changes have made traditional banking look more beautiful ad user friendly, the constant changes in the technology will ultimately define the future. Chapter 4 “Adoption of Fintech: A Paradigm Shift Among Millennials as a Next Normal Behaviour” The pandemic has put the world into a global health crisis tipping to a paradigm shift in consumer’s behaviour towards financial activities. People have adapted themselves to a new pattern in financial transactions like contactless payments, cashless transactions, online transactions and many more. There are greater chances for the end users to continue usage of fintech services during the next normal life (post Covid-19) as they have become familiar with the usage and convenience of fintech services. There is a need for examining the characteristics that control the user’s adoption intention of fintech payments apps during and post covid-19. Review of literature indicates that earlier experiments did not measured influence of Covid-19 (pandemic) on the behaviour of

xx  Preface the clients. Past studies indicate lack of literature in this topic of study. The study implies to provide insightful hindsight to the existing literature and business community to tap the rural markets that accounts to only 22-28% of India population having access to internet and frame strategies to improve financial infrastructure with financial literacy. Chapter 5 “A Comprehensive Study of Cryptocurrencies as a Financial Asset: Major Topics and Market Trends” The article comprises a set of theoretical and methodological approaches to studying the concept of “cryptocurrencies as a financial asset and market trends.” and identifies some trends of development of the real sector in the project financing market. This paper provides a systematic review of the empirical literature based on the major topics that have been associated with the market for cryptocurrencies since their development as a financial asset. It also presents an overview of the advantages of current trends in the market. Each influences the perception of the role of cryptocurrencies as a credible investment asset class and legitimate value. We posit that cryptocurrencies may perform some useful functions and add economic value, but there are reasons to favor the regulation of the market. While this would go against the original libertarian rationale behind cryptocurrencies, it appears a necessary step to improve social welfare. Chapter 6 “Customers’ Satisfaction and Continuance Intention to Adopt Fintech Services: Developing Countries’ Perspective” Finance Technology (Fintech) has emerged as the current trend in the financial world. Fintech services gain popularity from the increasing adoption by organizations and consumers. By applying empirical research, this chapter aims to explore the important factors influencing consumer satisfaction and continuance intention to adopt Fintech services. As previous studies on customers’ behavioral intention to adopt Fintech were mostly conducted in the context of developed countries, there is a paucity of research in the developing countries’ perspective. To address the research gap, this study focused on five selected developing countries, namely Malaysia, Indonesia, India, Nigeria and Philippines. Drawing on the extended Technology Acceptance Model (TAM) for the proposed research model, customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality and technology selfefficacy have positive effect on customer satisfaction and subsequently, continuance intention to adopt Fintech. The findings recommend that Fintech service providers to develop effective strategic frameworks to build consumer satisfaction and encourage their continuance intention to adopt Fintech. Chapter 7 “Fintech Apps: An Integral Tool in Titivating Banking Operations” Inception of fin-tech companies like Google pay, Paytm,

Preface  xxi Phone pe, Bharat pe, BHIM, amazon pay, mobikwik, paytm money, upstox, grow and payment banks like Airtel, Vodafone idea, Jio. The services offered by these fin-tech companies are endless. It has become essential for everyone who’s carrying out online transactions like buying and selling financial products, investing in IPO, starting SIP in mutual funds, exchanging currency, opening new international bank accounts, and receiving financial advice are forced to use the possible apps of fin tech companies. The study examines the influence of fin-tech apps on the revenue system of the Indian banks through the expansion of the customer base and the frequency of usage. Every transaction done through the fin tech apps generates revenue to the bank indirectly. This study tries to identify key high influenced fin tech app that contributes to the operational revenue of the bank. The frequently and most widely used fin-tech app by the customers are considered to conduct the study. The primary data is used for the study and sample considered for the study is around 390 respondents. In addition we also identify the factors that makes the customer to use the app frequently which is taken from the previous studies like network speed, security factors, ease of handling, additional freebies and services, support system, etc. Here we also measure the usage of non-banking services through these apps. The tools used here are basic statistical analysis like correlation between the factors and the frequency of usage and Multiple Linear regression and SEM to identify the high impact factors on the increased frequency of usage. The result of the study would deliver which of the Indian banks has used the fin-tech companies to the maximum extent Chapter 8 “Analytical Study of Fin-Tech in Banking: A Utility Model” India is the 5th largest growing developing country among the globe, and undoubtedly it is fastest growing itself into the Fin-tech market in recent years too. Paperless loaning, portable banking, secure installment passages, versatile wallets, and different ideas are now being taken on in India. The ongoing paper is focusing on understanding the purpose of Fin-tech for the banking sector in India. The author analyses the developments of Fintech trends, especially in Indian banking sectors. The authors additionally attempted to figure out the quantity of variables influencing clients’ aims to utilize these services with the goal that the Indian financial area will further develop its Fin-tech framework. To realize this, the information gathered through an overview of clients of banks in Chandigarh,, which ranks first or top performer in SDG Index among union territories. The Index for Sustainable Development Goals (SDGs) evaluates the progress on three key parameters viz social, economic and environmental. The information is gathered from the time period of January 2022 to February 2022 through

xxii  Preface survey questionnaire. The Sample size is 400 customers of banks located in Tricity-a good economic sector of India. To analyze the information, the author utilized multivariate regression to appraise the model which is used in this research. The outcomes show that Fin-tech service is vital for the Indian financial area specially banking sectors. The study has found the success factors that positively and significantly impact the Willingness of clients to use Fin-tech services through banks with the help of multivariate regression. The study has found the success factors that positively and significantly impact the Willingness of clients to use Fin-tech services with the help of multivariate regression. The factors which identified are Perceived Utility (PU), Sensible Usability (SU), Customer Belief (CU), and social implications (SOI). With the help offactors identified banks need to pay attention to these elements more so that they can work on the convenience of Fin-tech benefits more. Based on discoveries, banks might have a premise to revise the nature of Fin-tech services. Moreover, the outcomes are additionally significant for policymakers and researchers. Chapter 9 “Is Digital Currency a Payment Disruption Mechanism?” Digital economies are omnipresent, evident, and inhabit every sphere of human existence. Blockchain technology has changed how private currencies such as bitcoin and Ethereum are traded in open markets. To strengthen and protect the economic & financial system against such private currencies, the central banks around the world have leaped to introduce their own Central Bank Digital Currency (CBDC) for phasing out with high technology transformations. The present paper will be a first of its kind attempt to capture the perceptions and real-time issues of common people in the implementation of CBDC in a large country like India. As CBDC is still in its pilot phase of implementation, researchers have used the bottom-up approach to capture the requisite information from the common man view and the thematic analysis method was used to finalize the variables - financial literacy & inclusion, infrastructure, technical know-how, trust & belief in the system, and acceptance level for further discussion. The result analysis highlights, that government and implementing agencies of CBDC should ensure to reach the unreached population, especially in Tier-2 & 3 cities with proper technology infrastructure, and frequently hold awareness/orientation campaigns to realize the benefits of financial inclusion and easy adaptation of digital currency. Chapter 10 “Investor Sentiment Driving Crypto-Trade in India” describe the key factors driving the investor sentiments towards trading in the highly volatile cryptocurrencies. It attempts to gain insight into the reasoning behind the investor decision to trade in them. Extensive review of literature sheds light on the factors driving investment in cryptocurrencies.

Preface  xxiii It is evident that the awareness levels for crypto, the future of crypto investments and the potential returns that they are offering have created a huge interest among the general public. The reasoning behind trading and investing in cryptocurrencies are also unique in their nature. The adoption of taxation policies by the government although may seem like a deterrent however, the ‘Fear-of-Missing-Out’ or ‘FOMO’ seems to have caught hold of the investors in pushing such investment decisions. The sample consists of the retail investor and the investment advisors in India using the structured questionnaire. Stratified Sampling Technique was utilized for the purposes of this study. The Independent Samples t-test was used to analyse the data and final results were interpreted from them. The results showcase certain parameters such as awareness, promotion, global acceptance, future of investment, ‘Fear-of-Missing-Out’ or ‘FOMO’ etc. as some of the factors driving trade and investment in cryptocurrencies. There are significant differences in sentiments of Retail Investors and Investment Advisors. Gender also plays a role in sentiments driving these investment decisions and finally education levels of individuals are also critical as well. Chapter 11 “Applications of Digital Technologies and Artificial Intelligence in Cryptocurrency - A Multi-Dimensional Perspective” enlighten the basic idea behind cryptocurrency is that it is a network-based, totally virtual exchange medium that utilizes cryptographic algorithms such as Secure Hash Algorithm 2 (SHA-2) and Message Digest 5 (MD5) to secure the data. Transactions within the blockchain era are secure, transparent, traceable, and irreversible. Cryptocurrencies have gained a reputation in practically all sectors, including the monetary sector, due to these properties. The uncertainty and dynamism of their expenses, however, hazard investments substantially despite cryptocurrencies’ growing popularity amongst approval bodies. Studying cryptocurrency charge prediction is fast becoming a trending subject matter in the global research community. Several device mastering and deep mastering algorithms, like Gated Recurrence Units (GRUs), Neural nets (NNs), and nearly shortterm memory, were employed by the scientists to analyze and forecast cryptocurrency prices. As a part of this chapter, we discuss numerous aspects of cryptographic protection and their related issues. Specifically, the research addresses the state-of-the-art by examining the underlying consensus mechanism, cryptocurrency, attack style, and applications of cryptocurrencies from a unique perspective. Secondly, we investigate the usability of blockchain generation by examining the behavioral factors that influence customers’ decision to use blockchain-based technology. To identify the best crypto mining strategy, the research employs an Analytic Hierarchy Process (AHP) and Fuzzy-TOPSIS hybrid analytics framework.

xxiv  Preface Furthermore, it identifies the top-quality mining methods by evaluating providers’ overall performance during cryptocurrency mining. Chapter 12 “A Study on the Influence of Personality on Savings and Investment in Cryptos” explains the paradigm shift requires spreading the light of decentralized ledger technology, extraordinarily implementing cryptocurrencies, and being visible as a game-changer. Blockchain technology, along with cryptocurrencies like Bitcoin, Ethereum, and Litecoin, is a tool for global economic transformation that is rapidly gaining traction in the finance industry. However, these technologies have had low popularity in the consumer market. Many platforms have been misunderstood and ignored when there is an obvious hole in among them. Within the past few years, international stakeholders, governments, and regulators have been diversifying options for investing in cryptocurrencies. No matter what cryptocurrency device shape is used, the device can be viewed as a component of a specific Blockchain class and the functions it can perform within an economic ecosystem can be customized. The perception of cryptocurrencies has been influenced by the prominent technology underlying them. This has led to many challenges, such as security threats, economic instability, and a lack of standardized practices. Additionally, consumers do not seem to be familiar with those technologies. On many platforms, there is a clean hole in among that is no longer being considered and is being misunderstood. The basic idea behind cryptocurrency is that it is a network-based, totally virtual exchange medium that utilizes cryptographic algorithms such as Secure Hash Algorithm 2 (SHA-2) and Message Digest 5 (MD5) to secure the data. Transactions within the blockchain era are secure, transparent, traceable, and irreversible. Cryptocurrencies have gained a reputation in practically all sectors, including the monetary sector, due to these properties. The uncertainty and dynamism of their expenses, however, hazard investments substantially despite cryptocurrencies’ growing popularity amongst approval bodies. Studying cryptocurrency charge prediction is fast becoming a trending subject matter in the global research community. Several device mastering and deep mastering algorithms, like Gated Recurrence Units (GRUs), Neural nets (NNs), and nearly shortterm memory, were employed by the scientists to analyze and forecast cryptocurrency prices. As a part of this chapter, we discuss numerous aspects of cryptographic protection and their related issues. Specifically, the research addresses the state-of-the-art by examining the underlying consensus mechanism, cryptocurrency, attack style, and applications of cryptocurrencies from a unique perspective. Secondly, we investigate the usability of blockchain generation by examining the behavioral factors

Preface  xxv that influence customers’ decision to use blockchain-based technology. To identify the best crypto mining strategy, the research employs an Analytic Hierarchy Process (AHP) and Fuzzy-TOPSIS hybrid analytics framework. Furthermore, it identifies the top-quality mining methods by evaluating providers’ overall performance during cryptocurrency mining. Crypto currency is a digital currency that can be usedin the same waylike traditional currencyas a second hand. It uses encryption to secure its transactions, control the growth of a single form of coin, and track every transaction across the whole network. A survey of 434 Indian investors was conducted. In addition to socio-demographic characteristics study related to the human populations gender, income, age, and education, financial behavior (savings, investment) were collected and analyzed. The purpose to invest in crypto currencies is impervious by socio-demographic characteristics or financial literacy. This study looks into the impact of behavioral and socio-demographic characteristics on investors’ intentions to invest in crypto currencies. This article creates an attempt to scan the impact of investors’ personalities on their investment behaviour. Financial advisors would benefit from studying the elements that control the behaviour of investors belonging to an assortment of personality groups in order to edify individual investors found on their personality type and create investor programs for them. Chapter 13 “Deep Neural Network in Security: A Novel Robust CAPTCHA Model’’ The CAPTCHA verifies that the user is a human by using a password to strengthen personal identification security on the web services. Web services can be made vulnerable by automated attacks on websites. CAPTCHA is a well-known security method for protecting websites from being attacked by automated attack tools. When a CAPTCHA is given a high level of distortion to make it resistant to automated attacks, it becomes difficult for humans to recognise it. The problem can be addressed in a variety of ways using a neural network. Deep learning models Dense net, Mobile Net, and VGG were used to test the security in the presented research work. To assess the model’s fitness, the models performed batch normalisation using the required additional layer. With loss and accuracy, the best model is visualised. The experimental findings confirmed the neural network’s superiority over the current state-of-the-art technique for captcha recognition. Chapter 14 “Customer’s Perception of Voice Bot Assistance in the Banking Industry in Malaysia” the purpose of the chapter is to investigate customer’s perception of implementing voice bot technology in the banking industry. The ongoing pandemic environment has led to limited face-to-face interaction with customers and reduced instances of going

xxvi  Preface to ATMs for withdrawals. Some of the challenges that customers face is the unavailability of bank officers to attend to them, the long waiting time for services or banks are not open when they need it the most. Customer perception of the banking industry is reliant on the customer satisfaction provided. The banks should ensure to cater personalized and 24/7 multilingual service to their customers to retain their customers. To meet these demands, many banks in Malaysia, are now on the verge of introducing voice bots to engage their customers 24/7. The study has adopted a mixed method. The study revealed that convenience, time-saving, and perceived enjoyment are factors that drive the adoption of voice bot’s assistance in the banking industry. The study also adds value to academic literature for future researchers. The study contributes insights into customer perception of voice bot assistance, and it provides practical recommendations to implement voice bots smoothly and efficiently in the banking industry. Chapter 15 “Application of Technology Acceptance Model (TAM) in Fintech Mobile Applications for Banking” The rising prominence of Fintech payment services has a great impact on banking. It is increasingly becoming a global trend. Mobile payment applications and gateways are a well-liked use of Fintech services for banking. Of course, contactless payments are much more appreciated in today’s world. This research paper aims to study the factors that influence customers’ usage of Fintech services for banking. A descriptive and analytical study was conducted through a structured Questionnaire. The Technology Acceptance Model is used to examine the extent to the perceived usefulness, brand image, and perceived risk influence the usage of Fintech. The data have been analyzed and hypotheses have been tested by using statistical measures and quantitative methods. This study identified three factors Perceived usefulness, Brand image, and Perceived risk which influence the usage of Fintech services for banking. Perceived usefulness is the most enabling influencing factor on the usage of Fintech services. The results show that perceived usefulness and brand image have a significant positive influence on the usage of Fintech services, while perceived risks do not significantly affect the usage of Fintech services. It is expected that the findings of this empirical study would have enabled adding to the present contributions on the subject. Chapter 16 “Upsurge of Robo Advisors: Integrating Customer Acceptance” discuss the rise of fintech in the digital community opens the door for companies to introduce robo advisors. Robo Advisors have emerged as a result of technological advances, and it is important to use Robo Advisors to manage and direct projects in the financial industry. Robo Advisors are automated online investment services available to both private and institutional investors. The portfolio management service is critical for

Preface  xxvii the efficient distribution and use of the surplus of economic activity in large markets. These robots are programmed to eliminate the dangers of prejudice and human error. This research article is about exploring the strengths and weaknesses of robo advisers, and as opportunities and threats, especially when compared to traditional financial advisors. The current research provides a research framework to understand the acceptance of robo-advisors by investors. To evaluate the intention of customers to use the equation model of the technical structure was used to test ideas. The effects of ease of use and perceived usability are therefore important aspects of the purpose of using the service of robo advisors. The marketing strategies used should take into account the client’s level of familiarity with the robots. It contributes to a better understanding of customer attitudes towards robo advisor use in FinTech. The findings of this study provide relevant research on financial institutions, banks, policy makers, asset managers, FinTech developers and financial staff/advisors to increase the acquisition of Robo Advisors through the adoption of sustainable services. Chapter 17 “Super Apps: The Natural Progression in Fin-Tech” provides insights into the evolution of the concept of Super Apps, the market, key players, their business models, and their role in financial inclusion. The chapter also details the risks inherent to Super Apps and the measures to mitigate the same. Super Apps refer to an ecosystem that includes within itself a full suite of solutions such as banking, marketplace, and lifestyle services to satisfy various needs of a user. They provide a seamless and integrated experience and save them from switching between multiple individual apps. The market space for Super Apps is highly competitive, with fin-tech giants, banking companies, and big tech rivalling each other to acquire and retain consumers. The concept of a “Super App” seems to be a natural progression from the various offerings of the fin-tech sector.

1 Evolution of Fintech in Financial Era Tanya Kumar and Satveer Kaur* PCJ School of Management, Maharaja Agrasen University, Baddi (HP), India

Abstract

FinTech is one of the automated and innovative approaches which play a major role in digitalization of financial services through advancement in financial world. FinTech has wider access and can be used in various spheres of life. FinTech will also affect the financial decisions of the people which require financial as well as digital literary. FinTech enables the individual to take appropriate decisions regarding financial services during a reasonable period of time and can be used by individuals as well as businesses for tracking and managing the financial needs. The aim of the paper is to study the various related concepts of FinTech as well as how it works in financial era. The focus is also given to analyze various tools and techniques which can be used in this innovative financial technique. The estimation of future framework regarding FinTech is also incorporated in the study along with its evolution in financial era. The study will provide deep insight into FinTech as it is a u-turn for the banking mechanism and will play a major role transforming the financial world digitally. Keywords:  Artificial intelligence, blockchain technology, digitalization, financial era, financial world, FinTech

1.1 Introduction Innovative technology which is the merger of finance and information technology is commonly known as ‘FinTech.’ The concept is gaining its relevance since the past five years. There is a regulated financial framework which leads to financial innovation in terms of technological advancements and tracking of needs and requirements of the individuals over a period of *Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (1–12) © 2023 Scrivener Publishing LLC

1

2  Fintech and Cryptocurrency time [1]. FinTech is one of the automated and innovative approaches which play a major role in digitalization of financial services through advancement in financial world. It provides the win-win situation to the early adopters as it is gaining its important in modern world which is providing various opportunities to the new comers in the market. It provides the opportunities to optimize the portfolios of financial securities along with mitigation of risks over a period of time [2]. FinTech has wider access and can be used in various spheres of life. FinTech will also affect the financial decisions of the people which require financial as well as digital literary. FinTech enables the individual to take appropriate decisions regarding financial services during a reasonable period of time and can be used by individuals as well as businesses for tracking and managing the financial needs. There are numerous platforms which regulate the working of financial services and with FinTech, it would be appropriate to track them effectively. FinTech is reshaping the landscape of financial services. It offers better outcomes to the customers using the mechanism of tailoring the services using advice of the investors on the basis of customized needs of the customers at better returns in minimum inputs in terms of money as well as efforts [3].

1.2 Review of Literature Gnanmote (2018) [4] carried an analytical study to evaluate the FinTech in Indian economy in pre as well as post Covid-19 pandemic. The study was empirical in nature and adopted quantitative method to achieve the objective. Both primary as well as secondary data was used for collection of data. Interview method using semi-structured questionnaire was the method adopted for collection of primary data from experts to have the insight towards their knowledge towards financial services using Fintech approach. It was determined that the systematic approach has gaining wider reach among the customers post-Covid which is forcing them to move towards the adoption of new technology which managing their financial mechanisms. Kavuri & Milne (2019) [5] discussed about the related concepts of FinTech by identification of future working and growth of FinTech. Authors also tried to identify the related gaps in previous literatures as which could further help the policy makers as well as government regulators to manage the working of financial services in the economy. There were total six gaps identified by the authors in their research paper such as, dynamic organisational structure of financial services,

Evolution of Fintech in Financial Era   3 different variants in financial intermediation, encouragement of cashless mechanism of making payments, reach of vulnerable customers in both developing as well as developed countries, introduction of artificial intelligence in data processing, emerging new financial regulations as well as technologies. Legowo et al. (2020) [6] described the role and importance of FinTech mechanism in enhancing the technological framework. The study adopted descriptive as well as qualitative approach to achieve the objectives. The study employed primary as well as secondary data which provides deep-insight to the authors about the detailed scenario of FinTech and its technological framework. The primary data was collected using questionnaires which were filled by 154 respondents which were selected using convenience sampling method. The data was analysed using descriptive statistics. The theoretical framework was developed by considering three types of theory such as grand theory, middle theory and applied theory. Philippon (2017) [7] highlighted in her research paper about issues as well as challenges faced by FinTech in India with the objective to fill the research gap among the present literatures in the area along with studying the conceptual overview of the FinTech along with its adoption among customers using digital mechanisms. The stress was also given to identify various motivators in adoption of financial technologies along with the barriers in adoption of this technological advancement in the country. It was analysed that FinTech are required to be groomed using acceptable means of regulating them using systematic approach which provides them the reasonable opportunity to grow and expand in the future horizons. Subanidja et al. (2020) [8] studied the impact of FinTech on the performance of banking and financial institutions. The research study was empirical in nature which implied convenience sampling technique to draw the sample out of target population of the study. The questionnaires were used for collection of primary data. The sample size of the study was 100 respondents and the results were derived on the basis of responses gathered from them. SEM was the tool used for testing the model fit for the study using Smart PLS software. It was determined that there must be collaboration between banking system as well as financial sector to regulate the FinTech in desired manner and through which the economic growth can be initiated in the economy leading to the sustainable growth of the economy as a whole. Zavolokina et al. (2016) [9] reviewed related literatures on FinTech as how it leads to financial innovation with the perspective of press media.

4  Fintech and Cryptocurrency The study was conceptual in nature. The study implied exploratory as well as descriptive research design. The study used 829 articles which were collected from 46 different newspapers to achieve the objectives of the research study which provided the insight to the authors to gain the familiarity with the concept of FinTech and to derive the conclusions accordingly. The study was one of the first study which was being conducted to find the impact of FinTech on press media as it is one of the concepts which can be considered by using the technological aspects as well as various other practical applications of the technology in managing the financial services

1.3 Objectives and Research Methodology The study is being conducted to achieve the following objectives such as: 1. 2. 3. 4.

To study the concepts and working of FinTech. To analyze the tools and techniques used in FinTech. To estimate the future framework of FinTech. To study the evolution of FinTech in financial world.

The study is conceptual in nature and the analytical research design is followed in the study with the aim to achieve the predetermined objectives and deriving the conclusion on that basis. Secondary data is used in the study which is derived from secondary sources such as websites, blogs, journal articles, research papers and so on.

1.4 Working of FinTech Financial markets play a major role in stabilising the Indian economy as well as regulating the economic growth by offering wide number of financial services to the people using value authentication as well as providing them the opportunity to invest their money using fair and transparent approach of FinTech as it is enabled by Artificial Intelligence. One of the commonly known adoptions of FinTech is Blockchain technology which is providing abundant services to the individuals in terms of financial innovation. There are various patents which are taking place these days in financial innovation due to new as well as existing players in the financial world [10].

Evolution of Fintech in Financial Era   5 There are various regulatory changes which are taking place day-by day as per the provisions of financial services. These technologies run on algorithms of automatic programs. There are various financial solutions which are the reasons behind the stability and encouragement of FinTech in modern world [11]. The collaborative practice among public as well as private stakeholders made it possible to manage the market at reasonable costs with desired level of efficiency as well as effectiveness. It is the process of managing the financial operations as well as for enabling the new financial ventures by exploring the context of FinTech in the digital world [12].

1.5 Tools and Techniques used in FinTech FinTech can be used in making payments from one person to another or may be by one business to the next which make use of data transmission technologies, handling the user experiences and employment of data analytical techniques as well as handling the security issues among the people to make them rely on the financial services provided using FinTech. FinTech also offers advisory services using Internet of Things, advanced algorithms, automations using advanced sensors as well as artificial intelligence [13]. These are virtual trading platforms which regulate the exchange of payments in order to handle the financial aid of the individuals. There are wide number of apps which are developing day-by-day such as wealthtech and investtech which are the sub-divisions of FinTech which not require any geographical existence but are virtually registered and listed which offers the regulatory medium of exchange among the people [14]. The financing opportunities of the FinTech can be enabled using smart phones, artificial intelligence, big data, CSCW (Computer-supported cooperative work) and machine learning etc. The compliance mechanism of FinTech can be handled using robotics, drones, artificial intelligence, algorithms and so on. FinTech make use of crow funding which is one of the sources of raising the funds and management of the financial needs. There are various factoring services which can be handled using FinTech operations offering credit facilities to its clients when the need occurs. The assets can also be managed using FinTech such as social trading, roboadvice, personal financial management, investment and banking etc. These days search engine comparison can also be regulated using FinTech due to management of technological architecture using information technology is another regulator of FinTech [15].

6  Fintech and Cryptocurrency The framework of Fintech and Cryptocurrency is presented in Figure 1.1. It has been clearly highlighted that there are different participants of Fintech platforms as well as different types of Fintech platforms. The Figure 1.1 also provides insight towards the factors that can influence the development of Fintech platforms in long run. The participants of Fintech platforms are inclusive of Fintech startups, regulators, banks, international payment system, associations of bankers as well as financiers, incubators, accelerators, vendors and so on. The types of platforms related to Fintech include mobile phone services, social media and other informational sources contributing towards financial services, cryptography, market place lending, startups and new business models, artificial intelligence, digital identification, biometrics, application programming interface, applications and other different sources. The factors on which this framework is dependent PARTICIPANTS OF FINTECH PLATFORMS

FinTech start-ups

Regulators

Banks

International payment system

Associations of bankers and financiers

TYPES OF FINTECH PLATFORMS

Services via mobile phone, financial services in social media and informational platforms Alternative types of payments (payment teminals, contactless and mobile payments, QR code payments, electronic and digital wallets, e.g. cryptography) MARKETPLACE LENDERS (NON-BANK LENDING PROVIDERS): • peer-to-Peer (P2P) lending models (platforms for borrowers to source loans primarily from individuals or institutional investors); • balance sheet lending (retaining lender’ portfolios and collecting interest over the life of the loan portfolio) New business models (e.g. service aggregator platforms, offering the user most services at little or no cost)

Incubators

Artificial intelligence (e.g. making financial decisions using set algorithms, messaging chatbot tools, etc.)

Accelerators

Digital identification and biometrics (the identification of a user by voice, fingerprint or face recognition can simplify the delivery of all kinds of financial services)

Vendors

open Application Programming Interfaces (APIs). Various software programs can “interact” with each other simplifying the process of making apps

INFLUENCING FACTORS OF FINTECH PLATFORMS DEVELOPMENT

ICT infrastructure (the level of mobile connectivity, internet access, digital identification system, e-money, payment terminals, etc.)

Regulation (existence of legal framework, e.g. simple and transparent rules for starting a business, appropriate tax policies, licensing requirements, protection of rights for investors and businesses)

Access to capital and investment (availability of private capital, bank capital and high concentration of financial companies)

Expertise (qualified people iin order to help with accounting issues, legal support, and tax consultations for SMEs aimed at FinTech development)

Figure 1.1  Framework of FinTech. Source: https://www.researchgate.net/figure/Theoreticalapproaches-to-Fintech-platform https://www.researchgate.net/figure/Theoreticalapproaches-to-Fintech-platform-basics_fig6_326468708basics_fig6_326468708.

Evolution of Fintech in Financial Era   7 consists of ICT infrastructure, regulatory framework related to licensing and transparency, capital access as well as investment, expertise and so on.

1.6 Future Framework of FinTech FinTech is one of the deep-rooted deliberate actions which are changing the structure of financial services as how they are developed, perceived, promoted as well as delivered in the market and along with it how it is consumed in the market [16]. The consumers must be aware about all these practices which could help to reap the effective returns from the same. It manages the business models related to financial services which aim to deliver better as well as innovative services to their clients and making their efforts to attract the new customers in the market. It has the global reach which is emerging not only in India but in the whole world. It is the approach which is modernising the financial architecture by reorganising it as per the dynamic trends in digital era [17]. The banking functions can be regulated which handle the monetary system of the economy and the policies are regulated and managed as per the needs of the technological improvement in the field [18]. It is one of the competitive regimes which can be used by the start-ups to lead the market by tapping the less tapped area which could help them to grow as well as expand their business operations and would further benefit the economy as a whole. FinTech has very wide future which could lead to the improvements in the field of banking system as well as financial markets of India. It is one of the doors opening opportunity which is knocking the doors of the success are to be adopted at the right time to succeed and rule the market. The related norms and procedures are under development which would be based upon the related research as well as providing convenience and security to the customers.

1.7 Evolution of FinTech in Financial World FinTech is evolving in various fields such as finance, technology, consumer behaviour ecosystem and so on [19]. The support of FinTech is based upon techno-enabled systems which help to increase their level of efficiency using customer-centric approach [20]. FinTech is the impression which is offering unique as well as transparent opportunity to the banking population by providing them the financial services without considering the intermediary at minimal cost. The non-financial players are also finding it one of the best opportunities to secure their future in the longer period of time. With the technological improvements in all the areas, the efforts are being made in the

8  Fintech and Cryptocurrency area of banking as well as finance as their various components combined to it such as financial innovation as well as financial inclusion [21]. The risks can be minimised while dealing with these transparent mechanisms which offer the required level of transparency as well as security among the investors. Financial inclusion is also gaining the due importance in the developing countries like India which helps in managing the required level of risks and cost associated while dealing with those financial services [22]. It was determined that the systematic approach has gaining wider reach among the customers post-Covid which is forcing them to move towards the adoption of new technology which managing their financial mechanisms. FinTech is providing better customer experience in the form of secured personalisation, better service speed, significant functionality, convenient to be used and uses interactive mechanism [23]. FinTech is evolving to provide attractive services to the customers ensuring effective service quality as well as functionality. It offers the 24x7 access to the financial market. There are wide number of innovative products and financial services offered by financial institutions using appropriate use of financial mechanism which also offers the easy opportunity to set up as well as register the user interface [24]. As discussed in Figure 1.2, the evolution of Fintech can be traced from 1950s because at that time, Diner's Club introduced the first universal credit card. In 1960s to 1970s, the first ATM of the world was installed by Barclays in Enfield in London. As we move to the next year in 1980s, e-trade launched their first online brokerage services and along with that at the end of same year, online tele-banking was introduced in Britain by the Nottingham Building Society. After 1990s, it was found that Standard Federal Credit Evolution of Modern Fintech Online tele-banking is introduced in Britain NASDAQ PayPal by The Nottingham introduces makes its debut Building Society electronic trading

The Diners’ Club introduces the first universal credit card

1950s

1960s

1970s

The world’s first ATM is installed by Barclays in Enfield, London

1980s

1990s

2000s

E-Trade launches Stanford Federal the first online Credit Union brokerage services introduces first online banking website in the US

Alibaba creates facial recognition technology 'Smile To Pay' Google Pay Send launches

2010s

2019s

Digital-only banks like N26 creates industry Bitcoin v.01 disruption is created Fintech apps like Stripe and Venmo gain widespread popularity

Figure 1.2  Evolution of FinTech. Source: https://financesonline.com/uploads/2019/10/ Evolution-of-Modern-Fintech-1.jpg.

Evolution of Fintech in Financial Era   9 Union introduced their first online banking website in the US and PayPal made its debut in the market. In the beginning of 2010, Bitcoin was created and by mid of the year Google Pay Send was launched. It was also analysed that during 2010 to 2019, Fintech has gained a due relevance in the market which is inclusive of introduction of different applications, face recognition technology by Alibaba, digitalised banking mechanism and so on.

1.8 Discussion and Conclusion FinTech is one of the innovative approaches introduced in the field of banking system as well as financial world. There are wide number of FinTech start-ups which are taking place today which are offering numerous opportunities to the investors as it would lead to their empowerment, transparency in tracking their investments, efficiency as well as effectiveness, removal of intermediaries, accessibility to required information etc [25]. Transformation can be felt in the field of finance as well as information technology which is one of the innovative approaches which are customised according to the needs as well as requirements of the society. The study contributes to various areas of research such as finance, information technology, social sciences. The study also provides deep insights to explore in the area of FinTech to various educationists, practitioners, investors, government regulators and so on [26]. There are three generations of FinTech which can be traced in the Indian economy as ATMs were the first generation of the FinTech. While, Internet as well as Internet of Things is the second generation of FinTech and on the other hand, data enabling technologies are the third generation of FinTech in the digital world [27]. FinTech is one of the revolutionised concepts in the traditional financial services providers as they hold the money, lend the money and move the money [28]. But the legacy in the financial markets can be enabled using FinTech and its working can be traced from cryptocurrencies which are regulated using blockchain technology which is one of the parts of FinTech revolution offering countless opportunities such as buy-now-pay-later along with various peer-to-peer lending platforms to enable the automated working of FinTech platforms without any intermediary which provides them opportunity to directly meet their consistent needs over a period of time [29].

References 1. Zavolokina, L., Schwabe, G., & Dolata, M. (2016, December 14). FinTechWhat’s in a Name? Zurich Open Repository and Archive.

10  Fintech and Cryptocurrency 2. Barefoot, J. A. (2020, June). Digital Technology Risks for Finance: Dangers Embedded in Fintech and Regtech. Harvard Kennedy School: MossavarRahmani Center for Business and Government. 3. Yuen, M. (2022, April 15). Overview of the fintech industry: stats, trends, and companies in the ecosystem market research report. Retrieved from https:// www.insiderintelligence.com/insights/fintech-ecosystem-report/ 4. Gnanmote, A. K. (2018). FinTech Revolution in Banking: Leading the Way to Digital. Retrieved from Infosys. 5. Kavuri, A., & Milne, A. (2019, February 09). Fintech and the Future of Financial Services: What Are the Research Gaps? SSRN Electronic Journal. 6. Legowo, M. B., Subanidja, S., & Sorongan, F. A. (2020, May). Role of FinTech Mechanism to Technological Innovation: A Conceptual Framework. International Journal of Innovative Science and Research Technology, 5(5), 35-41. 7. Philippon, T. (2017, August). The FinTech Opportunity. Retrieved from Monetary and Economic Development. 8. Subanidja, S., Legowo, M. B., & Sorongan, F. A. (2020, October 01). The Impact of FinTech on the Financial and Banking Sustainable Performance: Disruption or Collaboration. ICEBE, 01-08. 9. Zavolokina, L., Dolata, M., & Schwabe, G. (2016). The FinTech phenomenon: antecedents of financial innovation perceived by the popular press. Financial Open, 1-16. 10. Myzyka, B. (2022, January 17). FinTech and Banks Future: How Financial Technology Affects the Banking Industry. Retrieved from Tech Magic: https:// www.techmagic.co/blog/fintech-and-banking/ 11. Artha, B., & Jufri, A. (2020, December). Fintech: A Literature Review. Journal Proaksi, 7(2), 59-65. 12. Almomani, A. A., & Alomari, K. F. (2021, August 25). Financial Technology (FinTech) and its Role in Supporting the Financial and Banking Services Sector. International Journal of Academic Research in Business and Social Sciences, 11(8), 1793-1802. 13. Harasim, J. (2021, December 14). FinTechs, BigTechs and Banks - When Cooperation and When Competition? Journal of Risk and Financial Management, 1-16. 14. Walden, S. (2020, August 03). What Is Fintech and How Does It Affect How I Bank? Retrieved from Forbes Advisor: https://www.forbes.com/advisor/ banking/what-is-fintech/ 15. Nazariy, H. (2021, September 29). The Impact of FinTech on the future of banks and financial services. Retrieved from Geniusee: https://geniusee. com/single-blog/fintechshttps://geniusee.com/single-blog/fintechs-impacton-the-future-of-banking-and-financial-servicesimpact-on-the-future-ofbanking-and-financial-services 16. Sanmath, P. A. (2018, October). FinTech Banking - The Revolutionised Digital Banking. International Journal of Trend in Scientific Research and Development (IJTSRD), 172-180.

Evolution of Fintech in Financial Era   11 17. Sahni, T. (2022, January 11). Fintech Industry of India: A New Vogue in The Market. International Journal of Engineering Research & Technology (IJERT), 10(01). 18. Mention, A.-L. (2020, June 30). The Age of FinTech: Implications for Research, Policy and Practice. The Journal of FinTech, 1-25. 19. Iman, N. (2020, February 06). The rise and rise of financial technology: The good, the bad, and the verdict. Cogent Business and Management, 7(1). 20. Gupta, S., & Agrawal, A. (2021, December). Analytical Study of FinTech in India: Pre and Post Pandemic Covid-19. Indian Journal of Economics and Business, 20(3), 33-71. 21. Sahay, R., Allem, U. E., Lahreche, A., Khera, P., Ogawa, S., Bazarbash, M., et al. (2020). The Promise of Fintech: Financial Inclusion in the Post COVID19 Era. International Monetary Fund: Monetary and Capital Markets Development, 20(01). 22. Beck, T. (2020, July). FinTech and Financial Inclusion: Opportunities and Pitfalls. Asian Development Bank Institute. 23. Kiilu, N. (2018). Effect of FinTech Firms on Financial Performance of the Banking Sector in Kenya. 24. P. Krishna Priya, K. A. (2019, September). Fintech Issues and Challenges in India. International Journal of Recent Technology and Engineering (IJRTE), 8(3), 904-908. 25. Kagan, J. (2020, August 27). Financial Technology – Fintech. Retrieved from Investopedia: https://www.investopedia.com/terms/f/fintech.asp 26. Chang, V., Baudier, P., Zhang, H., Xu, Q., Zhang, J., & Arami, M. (2020, June 21). How Blockchain can impact financial services – The overview, challenges and recommendations from expert interviewees. PubMed Central. 27. Graham, A. (n.d.). Fintech and Banks: How Can the Banking Industry Respond to the Threat of Disruption? Retrieved from Finance: https://www.toptal.com/finance/ investmenthttps://www.toptal.com/finance/investment-banking-freelancer/ fintech-and-banksbanking-freelancer/fintech-and-banks 28. Rupeika-Apoga, R., & Thalassinos, E. I. (2020, April 02). Ideas for a Regulatory Definition of FinTech. International Journal of Economics and Business Administration, VIII (2), 136-154. 29. Sen, S. (2017). Report of the Working Group on FinTech and Digital Banking. Reserve Bank of India Central Office Mumbai.

Webliography Fintech. (2022). CFA Institute: https://www.cfainstitute.org/en/research/fintech. Retrieved on 10th April, 2022 at 10:20 P.M. FinTech and Market Structure in the COVID-19 Pandemic. (2022, March 21). Financial Stability Board: 1-26. Retrieved on 12th April, 2022 at 06:45 P.M.

12  Fintech and Cryptocurrency How fintech is changing the future of traditional banking. (2020). University of Bath: https://online.bath.ac.uk/articles/impact-of-fintech-on-banking. Retrieved on 15th April, 2022 at 09:15 P.M. What is Financial Technology (FinTech)? A Beginner’s Guide for 2022. (n.d.). Columbia Engineering Boot Camps: https://bootcamp.cvn.columbia.edu/ blog/what-is-fintech/ Retrieved on 14th April, 2022 at 07:55 P.M. Fintech Framework https://www.researchgate.net/figure/Theoretical-approachesto-Fintechhttps://www.researchgate.net/figure/Theoretical-approaches-toFintech-platform-basics_fig6_326468708platform-basics_fig6_326468708 Retrieved on 25th April, 2022 at 06:15 P.M. Evolution of Fintech https://financesonline.com/uploads/2019/10/Evolution-ofModern https://financesonline.com/uploads/2019/10/Evolution-of-ModernFintech-1.jpgFintech-1.jpg Retrieved on 20th April, 2022 at 08:10 P.M. Fintech (Financial Technology). (n.d.). Retrieved from https://corporatefinance​ institute.com/resources/knowledge/finance/fintech-financialtechnology/

2 Digital Transformation of Financial Services in the Era of Fintech Ayesha Siddiqui1, Arti Yadav2 and Najib H.S. Farhan3* Department of General Management, Universal Business School, Karjat, Maharashtra, India 2 Department of Commerce, Ramanujan College, University of Delhi, New Delhi, India 3 Department of Finance, Universal Business School, Karjat, Maharashtra, India 1

Abstract

The present chapter analyses a conceptual framework highlighting the growth of the financial technology sector. It starts with the concept of digital transformation and how it has impacted the various stakeholders. Our conceptual framework allows us to define FinTech-financial technology and then construct a taxonomy of the various FinTech domains. We apply the notion of digital transformation to the financial sector to better understand where the FinTech concept began and, where it is headed, how Digital transformation has acted as a significant change agent in the fintech sector. Fintech is one of the most critical developments in the financial sector with fast expansion, fueled mainly by favorable legislation, sharing economy and information technology which has created innovative value creation and appropriation pathways for the financial industry. In most countries worldwide, Fintech is rapidly becoming the go-to financial system. Keywords:  FinTech, digital transformation, financial services

2.1 Introduction Innovation in finance can not only have a significant impact on financial services, but it can have an affirmative impact on the entire nation [1]. *Corresponding author: [email protected]; [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (13–34) © 2023 Scrivener Publishing LLC

13

14  Fintech and Cryptocurrency Finance and technological innovations are not new, and innovation in digital transformation has led to progress in terms of enhanced system connectivity, cost and power efficiency, and the creation of new and usable data [2]. Digital transformation in finance is known as Digital Financial Services and mainly depends on digital technologies for their usage and delivery to consumers. The latest advancement or innovation in digital financial services is Fintech which is highly influenced by the developments like machine learning, smart mobile phones, big data and artificial intelligence [3]. [4] has elucidated Fintech as a “technologically enabled financial innovation that could result in new business models, applications, processes, or products with an associated material effect on financial markets and institutions and the provision of financial services”. The difference in scope of Fintech and traditional digital transactions is somewhat arbitrary as Fintech primarily excludes using internet banking and credit cards [5]. Still, Fintech helps overcome the impediments to utilizing traditional financial services like information asymmetry, geographical barriers, and cost [6]. In most countries worldwide, Fintech is rapidly becoming the go-to financial system. Almost all financial institutions in developed countries like the United Kingdom and the United States have adopted Fintech [7]. In developing countries, Fintech fuels growth by offering economic freedom. India, China, some African countries, Mexico and the United States, have shown the most positive effects of adopting financial services [8]. Focusing more on digital banking solutions in the Fintech industry, the annual economic growth is boosted by up to 2.2 percent [9]. In addition, nearly 300 countries worldwide have seen rapid expansion in mobile payment services along with the increase in certain developing nations; the number of individuals having payment accounts has risen to 80%, indicating a real financial revolution on par with industrialized economies [10–12]. The rapid advancements in the escalating supremacy of information and communication technologies, mobile technology, predictive analytics, mobile technology, big data, cloud infrastructure, personalization and self-learning are the Fintech movement’s driving force [13]. Some analysts argue that technology and financial innovation are closely intertwined, and that economic development will eventually slow if financiers do not innovate [14]. Because information technology (IT) has made it possible to create economies of scale, the conflict between financial innovation and technology has grown [15]. In the services and manufacturing sectors, the pace of the digital transformation and the scientific conversation around business and IS research have been defined by the extent and speed of technological innovation [16]. While handling the organizational barriers and structural changes that affect the digital process’s positive and negative

Transformation of Financial Services in the Era of Fintech  15 effects, the digital transformation process comes into the picture where digital technologies lead to distractions triggering responses in strategic form from organizations that search to modify their value creation paths [17]. Therefore, the present study’s core idea is to add to the literature by synthesizing the role of digital transformation and Fintech concerning financial services. This chapter provides a conceptual framework that may be utilized by investors seeking value in the FinTech sector’s development. It started by defining the term FinTech-financial technology and then continued to create a taxonomy of the various FinTech areas. Investors looking to diversify their alternative investment portfolio may utilize this conceptual framework to find FinTech businesses with the most promising sectors and technology. Hence, investors might devise a strategy similar to allocating across sectors. The notion of digital transformation is applied to the financial services sector to understand better where the FinTech Revolution began and where it is headed. As we use it, digital change requires a catalyst. The Global Financial Crisis was the trigger that catapulted FinTech technologies into the spotlight. The COVID19 pandemic is the trigger that will guarantee that the most successful FinTech technologies are broadly embraced, while those that do not offer a solution to consumers and companies will go away. Therefore, the concept of digital transformation enables us to emphasize FinTech’s sensitive risk-reward balance. While money was available and values were inflated in recent years, the market shift that began in the first half of 2020 had put in motion a similar economic development to when the Dot-Com bubble crashed. Some may argue that the society didn’t get the benefit from the exponential growth of e-commerce and technology, but the bubble burst has guaranteed that smart money flowed to the most promising concepts, which is expected to happen in FinTech in the coming future. Unlike earlier book chapters, this one focus only on the subject of Digital Transformation. Several ideas have been proposed. We decided that defining multiple concepts in such a short document would be inappropriate, yet there was a requirement to draw attention to Digital Transformation since few literature evaluations were undertaken when matched up to, say, the term Digital transformation. Thus, this work presents a concept of Digital Transformation depending on the review of literature, provides a basic summary of the literature, and makes some recommendations for further research. The study is divided into various sections, starting with a brief introduction, followed by a review of literature on the concerned theme. In the third and fourth sections, an overview of the concept of digital transformation and Fintech has been given, followed by an assessment of the role

16  Fintech and Cryptocurrency of digital transformation and Fintech on the development of services in the financial aspect and the conclusion of the study.

2.2 Review of Literature As quite a lot of banks are now shifting to the cashless, paperless and digitization processes as part of FinTech, it is swiftly changing the appearance of the banking sector. As FinTech use grows in the financial industry, academicians and research scholars are researching the opportunities and challenges FinTech is creating for the service sector. Thus, this chapter will review previous research on FinTech in two sections. The first section demonstrates the studies related to FinTech, and the second section analyses the studies related to digital transformation.

2.2.1 Studies on FinTech Fintech is the interaction of information technology with financial services; however, the concept has been heavily explored for some time. For instance, the influence of information technology, productivity, and consumer welfare on the banking business has been discussed during the previous few decades [18]. According to [19], the financial services sector is currently undergoing consolidation, which will likely be followed by specialization-driven fragmentation. According to [20], technical progress that results in banking financial advances has implications for developments in Fintech. Since Fintech does not use conventional intermediaries while providing financial services, its interest has grown over time. In addition, [21] distinguished between innovations in information and communication and analysed the impact on financial intermediation of technological change. Various studies compared provision associated with credit by banks and nonbanks and documented the rise of Fintech lending across countries [22]. [23] Provided a synopsis highlighting the competition faced from big technology organizations and their influence on strategies adopted by businesses. Some other studies discussed how banking got impacted by Fintech and Bigtech [24, 25]. To make certain an efficient and effective distribution of resources in the economy, ICT (Information and Communication Technology) in financial intermediation plays a key role in the financial system by transforming savings into investment. This is done by financial intermediaries through screening and monitoring of uncertain investments on behalf of the savers who cannot do so [26, 27].

Transformation of Financial Services in the Era of Fintech  17 Therefore, customers and the economy gain from financial institutions’ forward-thinking attitudes. Financial institutions are trying to fulfil customers’ expectations by adopting advanced technologies like machine learning, artificial intelligence, and Fintech [28]. In order to have a competitive and long-term stay in the market for financial services, digital industry transformation is imperative [29]. In terms of borrowers with low risk, extra time-sensitive and less sensitive to price, Fintech organizations can charge higher rates due to the convenience of online origination [30]. Financial inclusion is also one of the considerable aspects of Fintech for undeveloped countries as well as unserved or underserved sections of the population and enterprises with small and medium sizes, and it opens the door through changing consumption, provision, and structure of financial services [3]. However, FinTech firms still have not acquired a top place in the market in terms of building paths in corporate lending to medium and large organizations [31]. Still a tiny share of total credit despite its continuous growth, for instance, in China, where Fintech has the best share of total credit activity, it still has a share of only 3% in 2017 of total credit outstanding to the nonbank sector is represented by FinTech credit [32]. It has also been observed that countries with higher income per capita tend to be more critical for FinTech credit and a less competitive banking system, such as China, the United States, South Korea, and the United Kingdom [22, 33]. [34] found that recently the news platform was seen dominated by the financial technology aspect. Fintech, taken in its broadest sense, is the incorporation of technological advancements into financial services and procedures. Recent annual numbers reveal US$135.7 billion in global fintech investments [28]. In this expanding industry, startups, established technology companies, and banks have emerged as critical participants [34–36]. Regulators and policymakers view Fintech as a chance to make the financial system more efficient, effective, and robust [37]. Fintech technologies aim to make financial services like payments, savings, credit, and insurance more accessible to the underprivileged. The inability of 1.7 billion people globally, most of whom reside in developing nations, to access these essential financial services prevents them from escaping poverty [12]. The fintech sector align with calls for creating a better world with ICTs and the innovations [38]. In addition, with changes in financial structure, the policy response is also becoming more challenging for financial services in the Fintech era. Most of the policy tools are generally aimed at objectives based on

18  Fintech and Cryptocurrency traditional financial regulation, privacy objectives concerning the data and level of competition [39]. Critical public infrastructure is mainly observed through a well-functioning financial system, and financial services providers take up an important place in that system through their role in credit intermediation and the payment system [40]. Therefore, financial services providers are legally subject to the regulations that also apply to the banking sector. The goal here is to limit the scope for regulatory arbitrage through shadow banking activities and to close the regulatory gaps between technology and services of financial nature. Digitally including financial inclusion might offer a more thorough and perhaps quite different perspective of the development through time and across the nation. Some recent studies examine pertinent variables, such as financial transactions made on mobile devices and mobile money accounts, to determine digital financial inclusion [41, 42]. The amount of research on digital financial services (DFSs) and financial inclusion is fast expanding, with most of it concentrating on experiences in particular nations or regional advancements in Fintech activity. In their analyses of Kenya’s fast adoption of mobile money and mobile phones [43] discover that mobile money significantly affects families’ capacity to share risks. Most of the material now in circulation focuses on conventional financial inclusion, made possible by financial institutions like banks. This is determined by metrics that reflect the availability of and usage of conventional financial services, like the proportion of people with bank accounts and ATMs, or by combining various data into a composite index [44]. By examining pertinent indicators, such as financial transactions and mobile money accounts made on mobile phones, several recent research has evaluated the stage of digital financial inclusion [41, 45]. These metrics, however, only capture one component of digital financial inclusion at a given moment and do not provide a whole picture that combines several dimensions. Therefore, the further sections of the present chapter will try to add value to the present literature by highlighting the basic to advanced progress in the digital transformation of services related to finance, which led to the era of Fintech.

2.2.2 Studies on Digital Transformation Over the last 20 years, data collection, transmission, and storing costs have declined due to the technological revolution. In recent times, customers’ expectations for any service have changed significantly due to digital transformation [46]. In most cases, they want these services at anytime from anywhere, leading to the setting up of a high bar for various services

Transformation of Financial Services in the Era of Fintech  19 industries [46]. Financial institutions have recognized this technology-­ focused shift, and wherever possible, they are trying to meet customers’ demand for digital interaction [47]. Technology, transparency, and trust are the primary offerings of the Fintech companies as they can provide services more transparently, through easy-to-use interfaces, and that too at a lower cost. In addition, advancements in Fintech have the potential to capture a larger market share and wear away the brand equity of the existing players’ costs [23, 48]. Further, it can overcome the information asymmetries by screening borrowers effectively based on big data via statistical models along with reduction for an extended branch network and the need for personnel [49]. Innovation has been accelerated by adopting technologies at a pace never previously thought possible [50]. In order to facilitate adaptable changes in information systems, operational processes, and society, businesses have been integrating digitalization [51]. The excellent adoption of digital transformation will significantly improve businesses’ dynamic capabilities, resilience and flexibility, increasing their performance. Thus, digitalization should be a key component of business strategy in all organizations [52]. In the last two years, it has been noticed that several digital technologies have spurred the digitization or transformation of the service industry [53]. Cloud computing artificial intelligence (AI), big data, and the Internet of Things (IoT) are key digitalization technologies adopted by businesses [52]. Another recognized benefit of digitalization is that digitalization makes high-level consumer collaboration possible digitization, which can create new income streams [54]. Online commerce’s most significant advantage is understanding and learning about clients over time without using extra channels to push goods or services to them. Further, it is argued that adopting technologies has aided businesses in creating and implementing creative business strategies [55]. The benefits are not limited only to businesses; society also benefits. Digitalization has drawn many knowledge workers to undertake cognitive activities [56]. It is believed that via the development of internal processes, digital transformation has made substantial changes in organizational structures [52]. Businesses have to formulate a strategy that promotes the digital transformation process in the era of services. Dematerialization, identification, and cooperation are the three shift facilitators proposed by [57]. Overall, digitalization makes all possible through advanced data analytics, connectedness across goods and services, and obfuscation of borders between suppliers, consumers, rivals, and even marketplaces [58]. In the

20  Fintech and Cryptocurrency quickly evolving marketplace, transformation in digital terms is quickly becoming a crucial motivator of competitive advantage [52].

2.3 Digital Transformation: A Conceptual Overview The concept of Digital Transformation is adopting disruptive technology to improve productivity, creating value and programs that lead to prosperity. Many multilateral institutions, industry associations and governments have implemented long-term planning to ground their long-term strategies. Digitization and innovation are affecting and creating threats among stakeholders in the entire industry, specifically in the financial industry. Firms in almost all industry areas are implementing several plans to study and employ the perks of emerging digital technologies, for instance, social networks and big data [59, 60]. It involves the frequent transformation of the essential business operations and the effects on the functioning of products and processes. Hence, disrupting management processes [61]. The entire society is undergoing quick and profound transformations due to the maturation of digital technologies and their extensive penetration of all marketplaces [62]. In addition to the increased demands from the customer’s end, the companies are also facing even tough competition due to the integration of global economies [63] and thus going an extra edge over the other companies to go digital before other companies go to attain the competitive advantages of other and survive [64]. As a product, “born digital” leaders (such as Google, Facebook, and Amazon) have grown into terrific powerhouses in the coming years, while those holding dominant industries for a long term have had their conventional value proposition threatened [59]. Despite the plethora of new technologies and methods for adopting them in industry and economy, genuine Digital Transformation is captivating much bigger and facing more problems than anticipated [65]. Unfortunately, there have been numerous latest examples of firms failing to keep up with the new reality of the digital world, such as Blockbuster’s bankruptcy, which was caused mainly by those companies’ inability to quickly create and execute new digitized business models [66]. Comprehensive Digital Transformation involves the evolution of various talents; the significance of the same will differ based on the industry’s background and the organizations’ exact demands. To remain competitive, digital technology should become indispensable to how businesses run and must reorganize and perhaps re-invent their models.

Transformation of Financial Services in the Era of Fintech  21 The global expedite growth of digital finance is due to digital transformation. Financial services ratification has migrated from developed to emerging countries due to the rapid development of the internet and the subsequent financial revolution [67]. Traditional financial institutions’ services were not generally found in many emerging economies until around a decade ago. The internet and smartphones both spread quickly in this atmosphere. Face-to-face banking contacts and visits to bank branches were not preferred by people in emerging economies who had never utilized traditional financial services. Although in emerging economies, the financial revolution is still essential compared to developed economies, it will encourage the digitization of financial services globally, both directly and indirectly, because of its fast-expanding size and rising influence on other industries through the usage of personal data. As a result of the changes in emerging markets, governments worldwide are promoting cashless payment policies [11]. The business world has been significantly altered by digital transformation. Researchers and practitioners are attempting to comprehend its structural evolution in various industries. Most players in the financial services industry recognize the importance of new technology in developing business performance and the happiness of consumers. Furthermore, the advancement of these advances has resulted in the entry of so-called FinTech’s into the financial sector. These institutions have democratized access to financial services and influenced banking strategy significantly. The burning question is not how many services a system provides. The problem is determining which financial organizations (including banks and FinTech’s) in the market can deliver the same service more efficiently, with higher quality, and with a more client-centered approach [68].

2.4 FinTech Ecosystem FinTech has been the Buzzword in the area of Finance. According to Venture Scanner statistics, more than $165.5 billion was invested in FinTech startups from 2010 through the end of 2019—a time we assign to as the “FinTech Revolution.” FinTech is still a barely known field, and investors seeking to diversify into non-traditional economic sectors may neglect it. The term “fintech” is complex, and its definition changes depending on who you ask. Let’s have a look at its properties. First, fintech firms, not traditional financial institutions, provide it. Second, they are less expensive than traditional financial services since they use the internet. Third, by

22  Fintech and Cryptocurrency removing the established regulatory framework, disruptive innovation is encouraged. Personal financial management tools, corporate accounting services, online payments linked to AI-based management of assets, crowdfunding and financial transactions are just a few examples. Instead of delving into individual fintech services, the present study will address the interaction between fintech and traditional finance [11]. FinTech, in general aspect is the use of modern technologies to provide financial solutions to individuals and businesses. More explicitly, the emergence of a trend. To boost financial activity, this new industry uses technology. [69] defined Fintech as “any new concepts that improve financial service operations by proposing technology solutions based on various business scenarios” [69]. Consecutive the GFC in 2008, advancements in mobile technologies and e-finance for financial organizations fueled innovation for Fintech. Internet, AI, integration in e-finance innovation, social networking and big data were all hallmarks of this growth [70]. Along with start-ups (the business related with financial service outside of banks), the term “fintech” can be defined as the application of information technology in the disciplines of finance, digital information innovation and financial innovation [71, 72]. Payment, Insurance, lending, crowdfunding, capital markets and wealth management, are the fintech models used in different business verticals [70]. With the establishment of cheques as a payment mode marked the beginning of technological advancement in the financial sector. Whereas, in 1958 the first credit card was issued by Bank of America, and ATMs began to aid process financial transactions, followed by the launch of a debit card as a transaction tool in 1968. Internet banking was introduced in the 1990s, aided by the expansion of the Internet. Fintech innovations such as mobile payments and crowdsourcing were introduced in the 2000s. The various subdivisions of the FinTech Industry are as follows: • Crowdfunding is a type of fundraising in which many contributors (known as “backers”) commit financial resources to accomplish a common aim. The platform provides as a middleman in place of a traditional bank [73]. Based on the type of attention given to investors for the fund invested by them, crowdfunding websites can be split into four subsegments. Whereas, Donation-based crowdfunding investors are not compensated financially for their offerings (although they may obtain indirect personal advantages from the act of gift [74], they do receive some sort of non-monetary compensation in reward-based crowdfunding.

Transformation of Financial Services in the Era of Fintech  23 • FinTech’s that provide direction, aggregated indicators and asset disposal management of individuals comes under the asset management segment. It is divided further into subsections. Investors (or “followers”) can discuss, observe, and replicate the investment strategies or portfolios of other associates of a social network through social trading [75]. The combined judgment of a huge number of traders is expected to help individual investors. Based on the trade plan of a social trading platform, participants may be charged for order charges, or percentages, and spreads of their investment. Portfolio management systems that give algorithm-based and totally automated investing advise as well as making investment choices are referred to as robo-­advice [76]. The algorithms used by robo advisors are typically based on diversification strategies passive investment [15]. • The personal financial management (PFM) that offers software services for the management and display of financial data and offer personalized financial planning, in particular fall within the segment of FinTech companies. Clients can use PFMs to see their assets. With one application, numerous financial institutions as well as loans collected from diverse lenders. • The payments segment is a catch-all term for FinTech’s whose apps and services deal with domestic and international payment transactions. The blockchain and cryptocurrency subsegment falls under this banner and includes FinTech’s that offer cryptocurrency (virtual currencies) as a substitute to traditional fiat currency. It is possible to save and exchange bitcoins, just as it is with legal cash [77]. Counterparties such as banks are unnecessary. One of the most popular cryptocurrencies is Bitcoin, which has had significant price volatility in the earlier period, has yet to set up itself as a reliable competitor to central bank-issued official currencies. • The substitute payment methods sub-segment includes FinTechs that provide alternative payment options. This subsegment includes businesses that provide mobile payment solutions. The phrase “mobile payment” is used in the academic literature to refer to a variety of mobile phonebased functions [78]. It includes bank transfers or payments using a mobile phone. The substitute payment methods subsegment includes companies that provide e-Wallets. It is a

24  Fintech and Cryptocurrency storage mechanism for digital currencies as well as payment information for various payment systems. • FinTech divisions which is not defined by the other three traditional bank operations, namely payment transactions, finance, and asset management are included in the other FinTech’s division. The insurance subsegment includes FinTech services that provide or ease insurance acquisition. InsurTechs are another name for FinTechs, which provide peer-to-peer insurance, that permits a group of holders of policy to combine their resources and take joint risk in the event of a loss. If there is no loss happens within the group, the premium is partially reimbursed [79].

2.5 Role of Fintech and Digital Transformation with Respect to Financial Services The financial services sector primarily consists of asset management, banking, and insurance operations, the first two of which are generally merged [50, 80]. The way of providing services to customers has changed rapidly due to digital transformation which is not just an innovative nice to have, but a necessity to adopt. As a result, recently, it has been noticed that digital transformation is accelerating. This acceleration has provided a huge potential for financial inclusion [6]. Research has provided empirical proof on the role of Fintech in increasing the access to financial services [43, 45, 81, 82]. Due to the easy access to technology and the increase of Fintech businesses, financial services found themselves compelled to change to keep up with growing digital population. Hence, financial service companies expanded their adoption of technology to articulate unique aspects of technology [83]. In the present scenario, financial services companies should be technologically innovative rather than adoptive in order to penetrate the market. Fintech has significantly changed the financial sector by lowering the cost structure, improving the quality of financial service, and providing a more diverse and even financial environment [70, 84]. Fintech has made financial service firms be more agile, scalable and flexible. Following are some of the Fintech benefits: - Cost reduction for financial business and customers: because of the absence of overhead costs connected with conventional organizations such as wages, rent and advertising, financial

Transformation of Financial Services in the Era of Fintech  25 firms would save money on these expenses and use the money saved to invest in their customers. It has been shown that automation of many processes is more effective in things like predicting loan risk more precisely and that it also requires less human presence which lowers the cost of services that hey deliver to clients. Further, the drop in transaction cost has enabled consumers to increase their spending capacity with fosters business growth [84, 85]. Moreover, the reduction in transaction cost of financial services such as remittances has attracted a segment of population who could not enjoy such services before due to the high transaction cost [84]. - Speed and ease of use: these are the most prominent advantages of digital transformation in financial sector. Technological advancements in a wide range of enterprises and industries have resulted in faster transaction methods and systems. To improve the speed of the transfer operation in particular Fintech systems, a variety of delivery options are available, including an accelerated approach. The traditional method of sending money abroad used to be done by going to a bank office or using an internet banking program. Further, only few banks were doing such business. Fintech enabled payment systems, where transactions may be executed at any time and from any location, do not have these limitations [84, 86, 87]. Furthermore, digital transformation has enabled consumers to make transactions without having bank account, for instance mobile money [84]. - Faster approval rate. The approval rate is faster for online or digital lenders, Fintech innovations have made the application and approval procedure feasible within a day. There is a pressing need for services to be delivered quickly, and this may be accomplished with little information from the consumer. This need has been fulfilled by digital transformation which has reduced information asymmetries and other expenses associated with credit applications in order to make credit and other forms of fund raising more accessible and affordable [84]. As a results of automation and the usage of artificial intelligence, many customers prefer to engage with machines rather than people [88]. Despite the enormous advantages of financial technology for financial service sector, it is hampered by concerns about which is unfortunate.

26  Fintech and Cryptocurrency Financial technology still has to show that it is safe and secure. In other words, Fintech services come with a variety of hazards, especially for consumers with less financial sophistication [84]. Following are some of the concern that would have some constrains on higher and faster digital transformation in the service sector: - Cybersecurity threats: Data theft or penetration may bring a financial institution to its knees with only one security breach. When it comes to dealing with the consequences of a security breach, there are may be inadequate financial and human resources. Miss-selling, scams such as phishing, hacker attempts, illegal use of data, biased treatment as an outcome of artificial intelligence algorithms, and so on are all problems that Fintech might expose unsophisticated customers to. To make efficient use of Fintech goods and services and avoid these hazards, higher degrees of digital transformation are required [84, 89]. For that Fintech companies often invest a significant amount of money in their network and physical security. As a sequence, clients may be certain that their personal information is secure. Furthermore, central banks around the word launch several campaigns on cybersecurity and fraud prevention in financial technologies. These campaigns consist of numerous ideas to create awareness about online purchasing safety and personal data security [90]. - Excessive borrowing: Lower income and less educated families have less financial access in general, and they are also more likely to over borrow due to a lack of comprehension of loan rules and interest rates. Fintech may add to the over borrowing problem to the extent that it makes such borrowing easy and cheap [84]. Thus, financial service sector has to conduct campaigns that target Lower income and less educated families, especially in the rural areas in order to increase the financial literacy. Digital transformation in services sector is promising of more innovations in the future. Regulatory authorities around the globe; more particularly in Asia have demonstrated a strong desire to promote the augmentation and development of Fintech, and a number of governments have created innovation offices and regulatory sandboxes. Thailand and Singapore make extensive use of regulatory sandboxes to test innovative Fintech models before allowing them to go live. Some nations, including Indonesia, Malaysia,

Transformation of Financial Services in the Era of Fintech  27 Vietnam, Lao PDR Thailand, and the Philippines have enacted favorable tax policies for Fintech enterprises, including lower corporate income tax rates and tax exemptions [84]. Hence, Fintech companies will not be pleased to stop their innovativeness at the current level; they will continue improving and expanding the scope of digital transformation even further.

2.6 Conclusion Fintech is the application of modern technology to enhance the efficiency of services in financial sector and operations. Fintech or financial technology has created new value for financial industry. Recently Fintech is the most imperative developments in the financial sector, and it is growing rapidly, fueled mostly by the economy sharing, favorable legislation and information technology which has created innovative value creation and appropriation pathways for financial industry [91]. In most of countries worldwide, Fintech is rapidly starting to become the go-to financial system. Almost all of the financial institutions in developed economies like the United State or the United Kingdom have adopted FinTech. Fintech has significantly changed the financial sector by creating a more varied and stable financial environment, enhancing financial service quality and lowering costs. Digital transformation in financial sector is featured with Cost reduction for financial business and customers, Speed and ease of use, and faster approval rate. Despite these features, there are some concerns such as Cybersecurity threats and Excessive borrowing which would hander fostering the digital transformation to higher level. Therefore, digital transformation in services sector is promising of more innovations in the future. Regulatory authorities around the globe; more particularly in Asia have demonstrated a strong desire to promote the growth and development of Fintech. For some financial services firms, the path to digital transformation might not be a straight line, it may even be a journey that teste the vision, resources, and leadership of firms. Therefore, firms have to deliver a deeply human experience that places the customers, employees, and partners’ fist.

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32  Fintech and Cryptocurrency 70. I. Lee and Y. J. Shin, “Fintech: Ecosystem, business models, investment decisions, and challenges,” Bus. Horiz., vol. 61, no. 1, pp. 35–46, 2018. 71. G. Zavolokina, L. Dolata, and M. Schwabe, “FinTech—What’s in a name?,” in Thirty Seventh International Conference on Information Systems, Dublin, Ireland, 2016, pp. 469–490. 72. R. R. Suryono, I. Budi, and B. Purwandari, “Challenges and trends of financial technology (Fintech): a systematic literature review,” Information, vol. 11, no. 12, p. 590, 2020. 73. P. Belleflamme, T. Lambert, and A. Schwienbacher, “Crowdfunding: Tapping the right crowd,” J. Bus. Ventur., vol. 29, no. 5, pp. 585–609, 2014. 74. J. Andreoni, “Giving with impure altruism: Applications to charity and Ricardian equivalence,” J. Polit. Econ., vol. 97, no. 6, pp. 1447–1458, 1989. 75. Y.-Y. Liu, J. C. Nacher, T. Ochiai, M. Martino, and Y. Altshuler, “Prospect theory for online financial trading,” PLoS One, vol. 9, no. 10, p. e109458, 2014. 76. ESA, “Discussion Paper on Automation in Financial Advice,” 2015. [Online]. Available: https://www.eba.europa.eu/sites/default/documents/files/documents/ 10180/1299866/b7e305c8-9383-4c46-a800-b0deb1e5b2a2/JC2015080 Discussion Paper on automation in financial advice.pdf?retry=1 77. BaFin, “Virtuelle Wahrungen/Virtual currency (VC),” BaFin, 2017. https:// www.bafin.de/DE/Aufsicht/FinTech/VirtualCurrency/virtual_currency_ node. html 78. N. Mallat, “Exploring consumer adoption of mobile payments–A qualitative study,” J. Strateg. Inf. Syst., vol. 16, no. 4, pp. 413–432, 2007. 79. V. Wolff-Marting, “Peer-to-Peer-und Friend-to-Friend-Versicherungsmodelle und die Herausforderungen aus IT-Sicht,” Vom, vol. 11, 2014. 80. O. Werth, C. Schwarzbach, D. Rodríguez Cardona, M. H. Breitner, and J.-M. von der Schulenburg, “Influencing factors for the digital transformation in the financial services sector,” Zeitschrift für die gesamte Versicherungswiss., vol. 109, no. 2, pp. 155–179, 2020. 81. M. A. N. Sy, M. R. Maino, M. A. Massara, H. P. Saiz, and P. Sharma, FinTech in Sub-Saharan African Countries: A Game Changer? International Monetary Fund, 2019. 82. M. N. R. Blancher et al., Financial inclusion of small and medium-sized enterprises in the Middle East and Central Asia. International Monetary Fund, 2019. 83. S. Nambisan, K. Lyytinen, A. Majchrzak, and M. Song, “Digital Innovation Management: Reinventing innovation management research in a digital world.,” MIS Q., vol. 41, no. 1, 2017. 84. P. J. Morgan, “Fintech and financial inclusion in Southeast Asia and India,” Asian Econ. Policy Rev., 2022. 85. S. Agarwal, W. Qian, Y. Ren, H.-T. Tsai, and B. Y. Yeung, “The real impact of FinTech: Evidence from mobile payment technology,” Available SSRN 3556340, 2020.

Transformation of Financial Services in the Era of Fintech  33 86. H.-S. Ryu and K. S. Ko, “Sustainable development of Fintech: Focused on uncertainty and perceived quality issues,” Sustainability, vol. 12, no. 18, p. 7669, 2020. 87. S. Agarwal and J. Zhang, “FinTech, lending and payment innovation: A review,” Asia-Pacific J. Financ. Stud., vol. 49, no. 3, pp. 353–367, 2020. 88. T. Truong, “How FinTech industry is changing the world,” 2016. 89. P. J. Morgan, B. Huang, and L. Q. Trinh, “The need to promote digital financial literacy for the digital age,” Digit. AGE, 2019. 90. OECD, “Supporting financial resilience and transformation through digital financial literacy,” 2021. [Online]. Available: www.oecd.org/finance/ supporting-­financial-resilience-and-transformation-through-digitalfinancialliteracy.htm 91. K. Boratyńska, “Impact of digital transformation on value creation in Fintech services: an innovative approach,” J. Promot. Manag., vol. 25, no. 5, pp. 631– 639, 2019.

3 Reshaping Banking with Digital Technologies Ankita Srivastava1 and Aishwarya Kumar2* School of Management Studies, National Forensic Sciences University, Gandhinagar, Gujarat, India 2 ICFAI Business School, The ICFAI University, Dehradun, India

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Abstract

The banking sector has gone a long way to come into its present form. It is still undergoing changes due to the introduction of various technologies. The digitization in the year 2000 was a step hard to move but now the people are more open to changes and willing to adopt technologies for the sake of convenience. This chapter discusses the banking sector’s adoption of Artificial Intelligence (AI), the evolution of financial technology (fintech), the changes brought by fintech in banking industry and the challenges which the technology in finance is facing nowadays. The chapter discusses in-depth, the deployment of Artificial intelligence tools like Robotic Process Automation, iSaaS and bots. It focuses the areas in banking where AI and machine learning applications are used and how. Though the changes have made traditional banking look more beautiful ad user friendly, the constant changes in the technology will ultimately define the future. Keywords:  Banking, AI, fintech, digitization, etc.

3.1 Banking and Artificial Intelligence (AI) Banking sector is a developing area which seeing quick acceptance of AI. The artificial intelligence guarantees balanced interface with the clients using the assistance of the computer-generated helpers and their administrations, accessible to the clients ceaselessly. Nowadays, we need everything mechanized from residence to workplace to simplify our tasks. Computer based intelligence turns into a fundamental portion of our lives. To utilize greatest benefit, it is essential to embrace newfangled technologies. *Corresponding author: [email protected]

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36  Fintech and Cryptocurrency The components of artificial intelligence exemplified by mechanized automated practice with data analytics to upgrade the client services, around which business rotates and various bots and simulated helps will aid the clients in the monetary decision-making process [1]. To comprehend in what way new advancements and their implementations are altering the future of the banking industry, we sincerely must understand the reference of AI and ML in banking. AI or artificial intelligence and ML or machine learning include forms of algorithms, which permit dives into cognitive conception for machines with the utilization of vast data handling and computing power. For instance, Goldman Sachs1 and UBS2 apply multifaceted calculations that copy the work of a human stock trader, the basic machine intellect is deployed with humanoid comparable decision-making ability for doing a particular chore. One more instance of the technology deployment by UBS and Deloitte, they made a straightforward, robotized program for managing their clients’ post stock trade allocation demands [2]. The framework (shown in Illustration 1) does a computerized audit of messages directed by customers itemizing in what way they need to designate huge block trade across funds, then processes and implements expected exchanges. Illustration 1 shows the framework of a computerized audit of customer messages. 2

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Scale up journey

Identify select/ functions/ business processes for PoC

Implement the PoC with production grade data in live business situations

Gather feedback, iterate for continuous improvement, and measure success against established metrics

Ensure availability of technology architecture, data skilled resources.

Scale successful PoC solutions across processes/ markets/ functions

Identify lessons learnt to templatize the process and set up an AI factory for similar roll outs

AI builds algorithms, databases, and learning engines which notices behavior, and learn to act accordingly when the data is fed to it. AI evolves through distinct phases when deployed. These phases include:

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Reshaping Banking with Digital Technologies   37

3.1.1 Basic Algorithms and Machine Intellect Simple machine intellect or algorithm-based reasoning that replaces a few components of human perception or judgment ability for particular jobs. Neural networks or calculations that can settle on human-­comparable choices for quite certain capacities, and perform better compared to humans on a benchmark premise [3]. In this phase, the brainpower of machine learning or discernment abilities can learn new assignments or interact with new data beyond its underlying programming. As o f now, many machine intellects devise this competence.

3.1.2 Artificial Common Intelligence A humanoid alike smart machine intellect and learning framework that not just excel in the Turing assessment and answers as a human would, but also can impersonate human judgment constructs. It also processes non-rational or triggering signs like sentiments, manner of speaking, facial expressions, and subtleties that presently a living being knowledge would be able to detect [4]. Such an AI would be able to effectively execute any cerebral task that a person would be able. Models include Sophia (Hanson Robotics) and Singularity.io5.

3.1.3 Ultra Smart AI A machine intelligence or assortment of robust machine intelligence that have outperformed human knowledge of an individual or on an aggregate base to the degree that they can comprehend and handle ideas that human brains are unable to comprehend [5]. The scope of impact of artificial intelligence is extensive. Terminologies like cognitive computing, machine intelligence, and artificial intelligence are not substitutable, however they do come under the umbrella of the extensive expansions in AI that mature today. To simplify the impact of AI, it is divided into two broad areas. The first is the interactive AI layer amid consumer and the organization. The second is internal one i.e. from the perspective of process. Illustration 2 shows the deployment of AI in the banking industry.

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MACHINE LEARNING LOAN AUTOMATION & IDENTITY VERIFICATION

2 ARTIFICIAL INTELLIGENCE

NATURAL LANGUAGE PROCESSING ANTI-MONEY LAUNDERING FRAUD DETECTION CHAT BOTS AND VIRTUAL AGENTS

3 4 5

DEEP LEARNING CUSTOMER BEHAVIOURAL MODELS PATTERN RECOGNITION RESPONSE MODEL

COGNITIVE COMPUTING

ALGO-HIGH FREQUENCY TRADING HUMAN EQUIVALENT PROCESSING PROGRESS AUTOMATION

ROBOTIC PROCESS AUTOMATION

AUGMENT HUMAN DECISION MAKING

3.2 Fintech Evolution Fast innovative progressions are empowering new ways to deal with a scope of monetary activities, from onboarding bank clients to sending super rapid trading techniques. Whereas fiscal organizations stood amongst the absolute initial private space to create huge interests in data innovation, and keeping in mind that technological innovation stays at the center of their business, most enormous organizations have gained critical inheritance of technical debt. This implies that these organizations are profoundly capitalized into unyielding frameworks that are timeworn. Withdrawing from these frameworks would be very difficult and exorbitant for these organizations, and ensuing the financial crisis, ventures of this nature verged are unimaginable [6]. These heritage frameworks caused it challenging for banks to hasten up with a portion of the thrilling novel prospects introduced by means of the speedy development of technology. Although a few monetary foundations perceived the capability of interacting with clients through innovative platforms like cell phones, utilizing cloud computing, or in any event, investigating new trading procedures empowered by manmade consciousness (AI), genuine execution was incredibly troublesome inside a working model obliged by old centralized computer frameworks [7]. Although banks attempted to focus on assets for development and fight their inheritance frameworks, nonfinancial advanced contributions were evolving quickly. Computerized locals like WeChat, WhatsApp, Uber, Facebook and Airbnb were altering their separate businesses as well as

Reshaping Banking with Digital Technologies   39 clients’ assumptions for digital encounters in all cases. These innovative technologybased organizations habituated shoppers to anticipate that digital services should be well-timed, customized, and on request [8]. When contrasted with these assistances, a developing amount of buyers started to perceive financial institutions as obsolete and impervious to transformation. More youthful clients have demonstrated to be especially disappointed with the financial encounters presented by banks. As a matter of fact, the millennial disturbance index saw that as 71% of millennials would prefer to go to a dental specialist than pay attention to their bank [9]. This situation, especially when aggravated by the dissatisfaction sensed in regards to banks by a larger number of people soon after the worldwide financial crisis and the covid pandemic has likely extended the pool of people able to explore newfangled financial technology contributions. The conjunction of the following three impetuses has constrained banks- insurance specialists, asset supervisors, and a large group of other personnel in monetary organizations to reconsider the cutthroat dangers they face. It has additionally constrained them to start reconsidering the manners by means where technology might help in conveying their worth to the clients. This alteration made many consider a statement made by Bill Gates (technology idealist), the organizer behind Microsoft, who proposed in 1994 that “banking is necessary, banks are not”3. Another declaration after right around 10 years after the fact repeats this feeling. In 2013, Jack Ma, the pioneer behind Alibaba, contended, “Two major opportunities are coming down the line for the monetary business. One is online banking, every one of the monetary establishments goes on the web; the second is cyberspace finance, driven by outsiders.”4 It is an assurance that the fate of monetary administrations would be described via fast transformation by means of technological innovation because the focal operator of fresh client contributions and cutthroat procedures. With the known acceptance of technology in the financial ecosystem, a few amazing open doors grew up leading to the word “fintech”. The term “Fintech” is a combination of “financial technology.” It is a buzzword meant for any innovation that is utilized to increase, smooth out, digitize, or distraught customary monetary administrations [10]. 4

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3.3 AI Opportunities in Fintech Coronavirus has altered the manner in which each industry works; the Financial Industry is no exemption. With work-groups as of now not ready to operate in organization buildings, the requirement intended on integrating automated innovation in Finance business has not been persuasive. Banks and Financial Institutions have taken on arising advances to adapt to the vulnerabilities that Covid has introduced to them [11]. Fresher technology has assisted them in tackling the changing workplaces and bringing dexterity and adaptability into a business arrangement. Organizations in the monetary area might use artificial intelligence to investigate and oversee information from different sources to give important insights. These pioneering outcomes assist banks in defeating the challenges they face on an ordinary premise while offering everyday types of assistance, for example, credit the board or installment handling. Here are some instances of FinTech development driven by AI, and the primary advantages FinTech organizations can acquire from artificial intelligence (AI).

3.3.1 Automation Fintech mechanization is characterized by the reception of robotized devices to smooth out end-to-end monetary tasks. To mechanize their procedures, Fintech organizations require an enterprise mechanization platform that operates and manage the commercial junctures and conveys continuous realtime results. The mechanization necessities of FinTech organizations shift from conventional banks to other monetary establishments [12]. FinTech is known for quicker and minimal expense administration contrasted with the assistance presented by customary monetary organizations, and robotization can assist them with conveying simply that. For Fintech, there are different IT requirements for mechanization and reconciliation. The developing tech scene, computerization, and incorporation empower FinTechs to speed up and smooth out their administrations. There are various automation devices accessible to browse. FinTech organizations can pick the right tool in view of their particular business prerequisites. It requires a formal procedure that addresses the organization’s needs for joining and robotization. Here are a few popular automation tools for the fintech industry.

3.3.1.1 Robotic Process Automation (RPA) Robotic Process Automation is considered to be the most useful automation strategy in FinTech. It is a UI-based computerization device that is

Reshaping Banking with Digital Technologies   41 important for certain chores. Explicit assignments like separating data from a heritage framework or a centralized computer can be performed by using RPA [13, 14]. RPA works best in situations when the user interface stays the same. It is possible to apply RPA’s API to cloud-based venture mechanization in order to automate business activities.

3.3.1.2 iPaaS Integration Platform as a Service (iPaaS) is a stage that normalizes how applications are incorporated into an organization, making it simpler to mechanize business cycles and offer information across applications [15]. iPaaS is proposed to organizations on a membership premise. Most iPaaS arrangements need on-premise deployment i.e. when data is stored on your own servers, and you install and manage the software.

3.3.1.3 iSaaS Integration Software as a Service (iSaaS) package is a cloud-based incorporation instrument that gives either prepackaged or effectively configurable coordination streams that are pointed toward aiding non-IT business clients and even purchasers to address straightforward application and information combination issues [16]. This incorporation programming is presented on a membership premise that is alluded to iSaaS services. These agreements do not provide the security components or combination capabilities that iPaaS agreements do. Individual employees can automate tasks like routing incoming emails to a spreadsheet or a Slack channel.

3.3.1.4 Bots An Internet bot, web robot, robot, or just bot, is a product application that runs computerized errands over the Internet, normally with the aim to imitate human action on the Internet, like messaging, for a huge scope of programming that performs mechanized assignments by running content is alluded to as Bots [17]. They can organize work in informing stages like Slack, answer demands, and work with the finishing of processes, or collaborations.

3.3.1.5 Enterprise Automation Cloud-native enterprise robotized solutions that make use of API relationships can be used to integrate enterprise applications, automate data, and

42  Fintech and Cryptocurrency computerize work processes for SaaS apps. Solutions for commercial automation consolidate strong combination capacities with computerization [18]. The IT division can plan business capacity mechanization through largescale business automation in collaboration with non-IT divisions. These arrangements include a user-friendly interface that is centralized in control. All of the fundamental use cases for digital transformation were created to support automation. Additionally, it provides a powerful combination with client-driven computerization, giving Fintech companies a comprehensive solution for every scenario. Automation was worked to help all the center use-cases for advanced change. It similarly offers areas of strength for client-driven computerization so Fintech associations have a united response for all cases.

3.3.2 Improved Decision Making The critical distinction among banking institutions and fintech is the magnitude of fast one makes decision. In a standard commercial bank, to adopt a new monetary service, you first need to agree to the venture, then begin gathering a genuine, specific credentials, and settle for the last resolution with various departments. This process could expect nearby six to eight months. Though, in majority fintech associations, these decisions are significantly more simplified as these decisions can be made rapidly at the investor’s level with a singular call allowing the venture to start quickly. This advantage licenses fintech to be more serious, creative, and speedier than standard banks [19]. In decision-making through AI, the data is handed over to an AI platform, and tasks like information crunching, pattern spotting, inconsistency location, and complex examination are possible by AI [20]. An ultimate choice is then made by an individual or AI completely. Virtual simulation intelligence is valuable for companies since it has the remarkable ability to constantly demonstrate itself - the more data focused decisions it makes, the more it learns. Computer based acumen educate itself and deploy data collections to assemble models which develops staggeringly perfect at making forecasts over this data [21]. These identical models can then be used on live data logically to make assumptions, arrangements, and ideas constantly, allowing associations to go with unprecedented business decisions. For instance, at Peak, client exchange information is used - taken from heaps of buys - to realize what items certain portions of clients are purchasing together. This model is then used to suggest correlative items on a site. Assuming that appears to be natural, this is on the grounds that different

Reshaping Banking with Digital Technologies   43 organizations like Amazon adopt a similar strategy to improve proposals to their clients to increment buys.

3.3.3 Customization One method for making an interpretation of the data into worth maybe through AI instruments, which couldn’t just further develop client encounters but additionally set aside the bank’s profit. As per a Business Insider Intelligence report from last year, front-office utilizations of AI could save the financial business an expected $199 billion by 20235. Artificial intelligence-­based approaches, as per creator Eleni Digalaki, could assist with improving on client communications through the sharing of customized experiences with clients, by giving over easier client associations to bots or voice collaborators, and by facilitating confirmation processes. She writes, “Certain AI use cases have proactively acquired unmistakable quality across banks’ tasks, with chatbots in the front office and anti-payments fraud in the central office”6. Personalization, obviously, isn’t restricted to the proposed product or exciting cash-saving tips while surfing the web. It can likewise prevent theft. By catching strange charges through fraud deception capacities, banks can help consumers hugely. Simulated intelligence-based apparatuses can assist with limiting the effect of banking services that can be computerized while carrying extra worth to the in-person association when it’s required [22]. Yet, past working with more straightforward communications, the utilization of AI offers the potential to grow client bases. One late focal point of the Consumer Financial Protection Bureau includes utilizing AI models as an elective way to deal with passing judgment on reliability for individuals without customary records. This information can assist moneylenders with settling on better-informed choices that can extend the bank’s range to new client bases [23]. By joining the force of customized advanced components using innovation with the individual touch that a retail branch can bring, banks can stay aware of shoppers in numerous settings while offering something that an online-just choice essentially can’t. 6

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3.4 Reshaping the Banking 3.4.1 Payments The effect of technology on payments is promptly clear. We have made considerable progress from the times of manual credit card imprinter and to paper-based handling of credit card slips. New payment structure factors including QR codes, cash-less cards, and versatile wallets are progressively coordinated into our day-to-day routines [24]. The developing presence of these computerized payment strategies is diminishing the utilization of money in both developed and developing economies. Worldwide noncash transactions are projected to develop at an annualized pace of around 18% from 2020 to 2025 and surpass the one and a half trillion mark.7 An overview by Market Screener uncovers that the FinTech market will be valued at $26.5 trillion by 2022, developing at a CAGR of 6%. The genuine purpose for this development is the requirement for advances and protection and expanding revenue in ventures. Illustration 3 shows Global Digital Payments Transactional value in USD billion – (2017-2024). 8

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Reshaping Banking with Digital Technologies   45 worldwide incomes from payments were US$1.9 trillion8. The new technologies are one of the major factors driving online payment volumes. The COVID-19 crisis essentially affected the worldwide payments industry, which has brought the banks to modernize further. COVID-19 has also brought a flood in the volume of transactions ahead by a few years. India had the biggest number of computerized web-based transactions of over 25.5 billion in 2020, trailed by the US (25.5 billion digital transactions) and China (15.7 billion online transactions). Additionally, with forced lockdowns, organizations had an opportunity to scale themselves carefully, bringing about customer expansion in digital spaces. Payment transactions in banking are portrayed by an enormous number of processes, supporting countless client interactions for everyday banking, and creating huge volumes of data; that possibly make transactions in banking a great use case for AI [25]. Specifically, AI presents substantial prospects in regions like fraud detection and prevention, payments, and onboarding. Artificial intelligence can assist with the detection and prevention of fraud by flagging up unusual payment transactions - for instance, where the sum included in the transaction is exceptionally enormous, or the payment transaction was started by somebody unexpected, or where the company/ individual has never recently executed with the objective organization or country that is getting the payment [26, 27]. Moreover, AI instruments can identify and screen strange behavior in staff, for example, signing on to banking frameworks out of hours. Artificial intelligence can be utilized to work on the speed and effectiveness of the payments process, by diminishing the degree to which people should be involved. For instance, today the most common way of paying a basic receipt can include critical human intercession both for the corporates and their bank, yet AI can work with straight-through handling of installments, via robotizing work processes, giving choice help, and applying picture acknowledgment to archives [28, 29]. Additionally, improvements in discourse acknowledgment innovation imply that banks can progressively deal with payments started through voice, where the initiator has utilized a PDA or savvy speaker. Artificial intelligence frameworks can screen payment transactions from the point the payment message enters the bank till it leaves the payment entryway by observing activities at an interaction level and proposing natural administrations and offers. With the admittance to takes care of 9

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https://www.mckinsey.com/industries/financial-services/our-insights/the-2021mckinsey-global-paymentsreport

46  Fintech and Cryptocurrency from monetary market on most recent patterns and process enhancements in different banks and so forth, AI frameworks can propose reasonable payment items for the client as far as handling time, payment charges, and payment use redid to client’s movement design. For instance, assuming the client is sending subtlety exhortation data inside the payment message, the AI framework might suggest a payment item that offers counsel as a connection. Such brief tailor-made ideas go quite far in client maintenance and fulfillment.

3.4.2 Lending & AI-Based Credit Analysis Machine learning and artificial intelligence are powering the future in the banking and financial industry. Though these new technologies are criticized for operating as a black box, their ability to analyze data without being limited to assumptions has helped the banks to classify and predict risk in a better way. The most recent use of technologies in managing credit risk in banks includes blockchain, artificial intelligence, mobile banking, text mining, cloud, and cyber-security techniques. The most commonly deployed machine learning algorithm in assessing bank credit risk is the Support Vector Machine. These new technologies have been largely used for classification problems in anticipating a potential client as “good” or “bad” to encourage a better credit choice. Hence it creates a predominance of classification-related algorithms. Numerous papers have explored the classification of the creditors and predicted the probability of default (PD), loss given default (LGD), and exposure at default (EAD). Several studies over the years have assessed and differentiated the exhibitions of various modern and traditional ML models in bank credit risk. In spite of the negligible use of deep learning models in credit evaluation literature, deep learning models, for example, convolutional neural networks indicated better outcomes contrasted with measurable and customary AI and ML models. When discussing Artificial Intelligence’s dedication to credit examination, it really is difficult to distinguish between the advantages of calculating usage and that of huge data accessibility. For instance, logical criteria in the case of a loan include the type of loan, the borrower’s characteristics (age, pay, marital status), and their financial history. Given these elements, a typical example of a rating is the FICO score that is widely used in the United States monetary sector to evaluate the dependability of commercial clients. These rating variables installment history, unsettled obligations, duration of credit, and the latest opened accounts, among others. Large data, on the other hand, come from a far wider variety of sources, perhaps

Reshaping Banking with Digital Technologies   47 as a result of the digitalization of client relationships (digital footprints) or the use of brandnew categories of client data, such as informal community activities. Huge data analysis of quite diverse data sources is fully expected, even when there is no obvious relation to the dependability of the clients. Fintech companies as well as traditional financial institutions (banks) can make use of these kinds of data. Depending on the type of commercial bank one considers, it is almost guaranteed that huge data undergo different types of management. FinTechs and comparable credit providers (such as lending platforms, online banks, neo-banks, and some seller sites) use huge data directly to create scores for internal purposes. These ratings are based on decisions on the expansion of credit, funding levels, and risk management of the advance portfolio. Credit counseling companies then make various attempts to make use of the vast amounts of data before creating credit risk scores that may be purchased by lending businesses. This re-appropriating of the assortment and examination of enormous data is thusly like the rethinking of customary scores, like FICO in the USA. Simultaneously, contingent upon the idea of the data gathered, it brings up unambiguous issues with regards to risk and administrative consistence. Some FinTech offering FICO ratings in view of large data vow to coordinate data from the moneylender organization’s and its directors on social media activity data, as well as information about the browsing behavior (such as an Internet address or a device used for browsing), of online credit applications. As an example, the initial Neo-Finance uses information on the type of job the advance applicant holds and his professional connections on the LinkedIn network. This financial tech hopes to increase financial awareness in developing countries by gathering forward-thinking data to provide both a credit score (Lenddo score) and a sort of personality assessment (Lenddo confirmation). According to its methodology, as many people as possible will be given access to credit while avoiding the need for a financial assessment (like FICO or a credit bureau). Their rating assembles various sources of data: client action on informal communities (e.g., Facebook, LinkedIn, Twitter), associations with individuals in danger, and route data from cell phones or PCs by the advance candidate. In a related vein, FinTech Zest Finance’s ZAML (Zest Automated Machine Learning) invention is incredibly instructive. It creates a score using a variety of very different sources of information, including electronic fingerprints, the client’s moving history, and the level of education indicated by the jargon used in writing and typing error detection, among others [30]. One more utilization of enormous data is embraced by business players, for a superior evaluation of the risk caused by their investors [31]. Another example is a huge online business organization situated in Germany, that

48  Fintech and Cryptocurrency only requires payment from customers after they receive their purchases within 14 days [32]. Each exchange is in this way understood as a momentary buyer advance, which expects that the organization can survey precisely the reliability of its clients. To do this, it depends on the advanced unique finger effect data had by clients’ perusing action in the approach a web-based buy. The contemplations presented here are to draw an image of potential mixes between large data and the data based on artificial intelligence in inspecting strategies in the credit examination procedure. They don’t yet report the more extensive financial effects (past the monetary establishments utilizing them straightforwardly) of AI use in association with reliability appraisals.

3.4.3 Wealth Management The greatest of organizations and richest of people look for the administrations of trained financial advisors to deal with their wealth. Be that as it may, monetary guides, in spite of their experience, mastery, or devotion, are human toward the day’s end. And you never want human mistakes in the administration of your money or other assets. Likewise, depending a lot on your monetary consultant may likewise leave you helpless against possible misrepresentation. Your financial advisor has generally your private monetary data, all things considered. Artificial intelligence isn’t a curiosity in the monetary area and has a few applications in this domain. Applications powered by artificial intelligence can either augment human abilities by handling vile tasks or proactively take on new crucial tasks for businesses. In either case, AI in asset management ensures a high level of gauge accuracy by looking at billions of different circumstances and relevant data [33]. The assets incorporate an individual’s all monetary property in general. The handling of explicit investments, such as securities, mutual funds, bonds, and other analogous assets in your portfolio, is the subject of asset management. The most well-known uses of AI in asset the executives incorporate is portfolio-related decision making, compliance management, and monetary guidance [34].

3.4.3.1 Portfolio Management Machine learning and AI’s apophenia capabilities are efficiently used to determine which stocks should stay and leave in one’s portfolio. AI determines the relationship between risks and returns connected to every stock by weighing a massive number of variables, including the organization’s financial health, its appetite for risk, and the historical or sporadic performance of

Reshaping Banking with Digital Technologies   49 stocks in a particular class [35]. These ideas continue working on sufficiency by persistent learning and assessment of financial stock exchange patterns. Aside from quantitative patterns, AI-based assets management tools likewise utilize subjective information from the web, for example, monetary estimates, newscasts, and online societal media. AI in asset management evaluates the types of stocks that can decrease absolutely with no likelihood of rising again while keeping the risk variable elements, such as losing mortgage property, bankruptcy, and the other subjective factors. For instance, a company’s stock will plummet if it receives negative press for some reason in the securities exchange according to the perception, a reality AI decides ahead of time with the assistance of predictive analysis [36].

3.4.3.2 Compliance Management Computer-based intelligence empowers a business to oversee risks such that administrative compliance is accomplished. Artificial intelligence calculations can be used to separate administrative data from public notice and then use the data to produce a report. Businesses can also utilize AI to track changes to speculative laws using reliable internet sources such investment strategy statements, IMAs, exemptive rulings, and related documents. From the perspective of consistency, one of the main goals of AI in asset management is to reduce the number of false alarms that are generated by conventional, rule-based compliance frameworks. As late as 2021, almost 95% of all warnings for inheritance compliance-ready frameworks at some banks9 were “misleading positive” alerts. In order to identify money laundering schemes and produce alerts, banks have spent decades and significant sums of money developing automated transaction monitoring systems. Artificial intelligence and AI catch, clean and investigate numerous information components to smooth out compliance-ready frameworks. Along these lines, a company can avoid spending needless time and money on researching enormous alarm lines to track down insights concerning caution. Costs are saved in alternate ways as well, for example, the mechanization of complicated administration processes that actually rely upon manual work and paper-based documentation in a couple of affiliations [37]. According to an analysis, administrative and compliance expenditures account for about 15% to 20% of an organization’s daily costs10. In addition to these, AI in asset management regularly enables organizations to direct their HR for the tasks that require “human” contact, 10

11

9 10

10 11

https://thestack.technology/transaction-monitoring-banking/ https://nexusfrontier.tech/5-ways-ai-improves-compliance-programs-in-asset-management/

50  Fintech and Cryptocurrency effectively manage assets and investments, robotize management change at the time of administrative changes (thereby sparing significant fines), and moderate human error in asset management. AI integration in asset management operates just as you would expect it to in a financial context.

3.4.3.3 Robo-Advisory One of the main subsets of AI, machine learning technology, exhibits a guarantee in the area of abundance management. Currently, there are over 100 robot financial advisors spread across 15 countries. Financial indicators project that roughly US$16 trillion will be in assets that Robo-guides will be in charge of managing [38]. Before presenting the finest financial options available, robo-guides use client input and take into account factors like risk appetite, liquidity, and others. This is done before making an interest in the offers, bonds, or other financial assets [39]. Robo-counselors have gone through four primary advancements. The primary stage included client-financial backers getting single-item recommendations based on a web-based survey that clients would fill to take care of data about their speculation inclinations. No delegate API was intricated. The ensuing improvement consolidated the usage of risk-based portfolio tasks and the possibility of resources. The third advancement accomplished the usage of estimations for rebalancing recommendation. The last improvement automates money related speculations with self-learning and uses AI and high level mechanics to robotize assets shift. Artificial intelligence will keep on being intensely engaged with robot monetary counselors [40]. Wealth management encompasses a much wider range of concepts than asset management, which only includes a small number of things. Before making recommendations to increase someone’s wealth, it looks at the numerous factors that affect their overall finances. Advances in wealth management also make use of some of AI’s asset management capabilities, such as cost reduction and improved navigation. The main applications of artificial intelligence in business and privately managed money management are as follows: a) Tax Planning A tax planning helper by the name of Odele11 is an illustration of AI-based automated tax planning. The tool could be a valuable asset for businesses, entrepreneurs, wealthy families, and similar clients. Odele, an AI-based tax 12

11 12

https://www.linkedin.com/pulse/help-us-create-odele-tax-operating-system-disruptservices-pollock/

Reshaping Banking with Digital Technologies   51 organizer, assesses tax hypotheses, forecasts, and designs autonomously. Also, such a framework breaks down information from past records and other monetary sources to work out sums, for example, lost pay because of duty and other comparative figures. In view of the examination of earlier years, the device suggests ideal tax planning and design for clients. Factors, for example, individual way of life may likewise be thought of. Lastly, the framework improves and keeps up with new information from organizations like the IRS to help you build and modify tax assessment approach. For the most part, tax assessment in any nation accompanies ways of absolving oneself from paying it in various ways. With AI-based tax management tools, people can fully understand the different ways to save money [41]. b) Estate Planning Similar to the majority of conventional wealth management concepts, estate planning also operates by being buried in administrative tasks. Documentation would incorporate the actual duplicates of ID evidence records [42]. That method of domain arranging dials back the whole interaction. All things considered, AI can be effortlessly utilized to improve estate preparation. The innovation can give bits of knowledge into arranging your domain while remaining on the right half of government or state regulations. Artificial intelligence is adequately progressed to break down an individual’s perplexing circumstance and give an ideal result in regards to their estate. Moreover, AI could make legal documents for such people. Factors, for example, decision making in regards to the exchange of estates can be robotized with AI and ML [43]. In addition to these, wealth management has a few other areas that can be improved with AI’s help. Giving clients individualized commitment and customer service is one such area. As of now, devices, for example, chatbots are being utilized for further developing the client support chief point of interaction. Chatbots work with independently to resolve client questions in regards to privately invested money management [44]. Artificial intelligence in wealth management studies various factors with the aim of allowing companies to choose the best stocks or different assets in the currency market. On the financial side, wealth management is broader and covers topics such as tax planning, estate preparation, and various elements. AI may be costly to implement and operate, but the level of convenience it brings to the money market is unparalleled.

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3.5 Insurance The insurance business has just started its introduction to AI, and organizations are now exploring different avenues regarding better approaches to integrate it into their everyday tasks fully expecting the further innovative turn of events. Pogreb, an underwritwer at Argo Group sees much more potential for smoothing out the endorsing system. She expects that the quantity of utilizations a human guarantor is expected to deal with will fundamentally drop as AI tracks down its spot in the insurance business. “We accept with innovation and AI, a ton of human underwriting should be possible away with,” Pogreb said. “The level of insurance applications that require human touch will go down decisively, perhaps 80% to 90%, and even to low single digits.” While AI reception has come in simple ways, it’s as of now definitely changing the lay of the land. Insurance agencies that need to remain serious ought to try things out of AI, Wolanow said, “Organizations can plan and remain cutthroat by beginning to evaluate the effect of AI on their business by prototyping their own calculations,” he said. “A singular AI calculation that plays out its examination on an independent premise is very reasonable, and as a rule, an independent investigation device is more than fit for reason.”12 Insurers exist to deal with cases and assist clients with covering them, however, evaluation of claim is difficult. Agents should audit several policies and go over everything about deciding how much amount of claim the client will get for their case. That can be a cautious process - and AI can help [45]. AI devices can quickly figure out what’s associated with a case and gauge the potential expenses included. They might investigate pictures, sensors, and the safety net provider’s authentic information. A insurers plan can then investigate the AI’s outcomes to confirm them and settle the case. The outcome benefits both the guarantor and the client. Boundless industry reception of a specific innovation frequently mirrors the advantages it offers to organizations in the area, in some cases with no conspicuous impacts on the client. That isn’t true with the insurance industry AI, which enjoys clear benefits for the client. Artificial intelligence helped risk appraisal and can assist insurers with better tweaking plans so clients pay just for what they really need [46]. It can likewise limit human errors in the application cycle, so clients are bound to get plans that appropriately met their requirements. 13

12 13

https://www.businessnewsdaily.com/10203-artificial-intelligence-insurance-industry.html

Reshaping Banking with Digital Technologies   53 It can likewise grow a insurers plan’s client care choices and smooth out the case endorsement process. The outcome is clients get what they need.

3.6 Challenges Faced by Fintech in Banking 3.6.1 Regulatory Compliance The regulatory compliance is one of the prevalent hurdle which the fintech enterprises face as the financial sector is one of the most regulated sectors. The traditional fintech softwares do not work on blockchain and other crucial technologies so the government interference will be always there. It’s better to go for legal consultants to avoid any discrepancy.

3.6.2 Customer Trust As indicated by Accenture, 79 percent of brokers and 82 percent of US investors concur that AI will change how banks accumulate data and communicate with purchasers. Enormous data and AI have had their effect in each financial institution. Utilizing large data, banks can gather personal data about clients, economic wellbeing of clients, monetary behavior, propensities, and in-application movement. Banks need this information in order to provide additional highrisk financial services and calculate credit scores. AI automates the entire interaction to distinguish misrepresentation, perform risk investigation, and manage transactions successfully with the help of enormous amounts of data.

3.6.3 Blockchain Integration One can find numerous applications for financial technology that integrate blockchain innovation. While some of these firms don’t think a blockchain is a workable option, others see it as a way to improve data exchange. By implementing a blockchain, one may increase the trustworthiness of the Fintech industry because it allows one to look into and follow each stage of a transaction, stop any changes to it, and keep track of it continuously. In any case, coordinating a blockchain is a difficult undertaking for majority of financial institutions. Up to this point, banks and other monetary foundations have been delayed to get on the blockchain pattern. However, fintech startups are attempting to distraught the Fintech area. Be that as it may, they ought

54  Fintech and Cryptocurrency to think about the conventional banks and state run administrations into account, as these foundations are as yet dubious of new innovations.

3.7 Conclusion In spite of the fact that, it’s difficult for customary banking to embrace recent fads and technological advances. It is said with confidence that in time, versatile technologies will turn out to be much more normal in the monetary landscapes, since these help banks operate more effectively while being advantageous and practical for people. In a sense, fintech companies are modernizing their operations and setting a benchmark for the banking sector. The processes and administrations in institutions are being improved and mechanized by monetary innovation in technology. Nonetheless, these difficulties push our creative mind in new ways and support unrivaled development, yet there’s opportunity to get better.

References 1. A. V Thakor, “Fintech and banking: What do we know?,” J. Financ. Intermediation, 2020. 2. Deloitte Report, “Artificial intelligence in post-trade processing,” 2021. 3. G. Teles, J. J. P. C. Rodrigues, R. A. L. Rabê, and S. A. Kozlov, “Artificial neural network and Bayesian network models for credit risk prediction,” J. Artif. Intell. Syst., vol. 2, no. 1, pp. 118–132, 2020, doi: 10.33969/ais.2020.21008. 4. M. Andrejevic and N. Selwyn, “Facial recognition technology in schools: Critical questions and concerns,” Learn. Media Technol., 2020. 5. B. C. Stahl, A. Andreou, P. Brey, T. Hatzakis, and ..., “Artificial intelligence for human flourishing–Beyond principles for machine learning,” J. Bus. …, 2021. 6. M. Palmié, J. Wincent, V. Parida, and U. Caglar, “The evolution of the financial technology ecosystem: An introduction and agenda for future research on disruptive innovations in ecosystems,” Technol. Forecast. …, 2020. 7. H. Pallathadka, E. H. Ramirez-Asis, T. P. Loli-Poma, and ..., “Applications of artificial intelligence in business management, e-commerce and finance,” Mater. Today …, 2021. 8. S. Ma, J. Murfin, and R. Pratt, “Young firms, old capital,” J. financ. econ., 2021. 9. Scratch, “The Millennial Disruption Index,” US, 2013. 10. D. W. Arner, J. N. Barberis, and R. P. Buckley, “The Evolution of Fintech: A New Post-Crisis Paradigm?,” SSRN Electron. J., 2015, doi: 10.2139/ ssrn.2676553.

Reshaping Banking with Digital Technologies   55 11. Z. Bao and D. Huang, “Shadow banking in a crisis: Evidence from FinTech during COVID-19,” J. Financ. Quant. Anal., 2021. 12. P. S. Perumal, M. Sujasree, S. Chavhan, D. Gupta, and ..., “An insight into crash avoidance and overtaking advice systems for Autonomous Vehicles: A review, challenges and solutions,” … Artif. Intell., 2021. 13. K. Kelley, RPA in banking gives fintech a competitive edge. … /feature/ RPAinbanking-gives-fintech …, 2019. 14. M. A. Unal and O. Bolukbas, “The Acquirements of Digitalization with RPA (Robotic Process Automation) Technology in the Vakif Participation Bank,” 2021 4th Int. Conf. …, 2021, doi: 10.1145/3459955.3460602. 15. M. Marian, “iPaaS: Different Ways of Thinking,” Procedia Econ. Financ., vol. 3, no. December 2012, pp. 1093–1098, 2012, doi: 10.1016/s2212-5671(12)00279-1. 16. W. Sun, K. Zhang, S. K. Chen, X. Zhang, and H. Liang, “Software as a service: An integration perspective,” Lect. Notes Comput. Sci. (including Subser. Lect. Notes Artif. Intell. Lect. Notes Bioinformatics), vol. 4749 LNCS, pp. 558–569, 2007, doi: 10.1007/978-3-540-74974-5_52. 17. M. Wessel et al., “The power of bots: Understanding bots in OSS projects,” Proc. ACM Human-Computer Interact., vol. 2, no. CSCW, 2018, doi: 10.1145/3274451. 18. A. Kintonova et al., “Automation of Business Processes At the Enterprise During a Brand Formation,” J. Interdiscip. Res., pp. 107–113, 2019. 19. A. Agarwal, C. Singhal, and R. Thomas, “AI-powered decision making for the bank of the future,” McKinsey Co., no. March, 2021. 20. M. Abuhusain, “The role of artificial intelligence and big data on loan decisions,” Accounting, vol. 6, no. 7, pp. 1291–1296, 2020, doi: 10.5267/j.ac.2020.8.022. 21. S. Fallahpour, E. N. Lakvan, and M. H. Zadeh, “Using an ensemble classifier based on sequential floating forward selection for financial distress prediction problem,” J. Retail. Consum. …, 2017. 22. S. Carta, G. Fenu, D. R. Recupero, and R. Saia, “Fraud detection for E-commerce transactions by employing a prudential Multiple Consensus model,” J. Inf. Secur. …, 2019. 23. S. Rahi, N. M. Yasin, and F. M. Alnaser, “Measuring the role of website design, assurance, customer service and brand image towards customer loyalty and intention to adopt internet banking,” J. Internet Bank. …, 2017. 24. S. Agarwal and J. Zhang, “FinTech, Lending and Payment Innovation: A Review,” Asia-Pacific J. Financ. Stud., vol. 49, no. 3, pp. 353–367, 2020, doi: 10.1111/ajfs.12294. 25. I. R. de Luna, F. Liébana-Cabanillas, and ..., “Mobile payment is not all the same: The adoption of mobile payment systems depending on the technology applied,” … Forecast. Soc. …, 2019. 26. S. C. Valverde, D. B. Humphrey, and R. L. Del Paso, “Electronic payments and ATMs: changing technology and cost efficiency in banking,” 25th SUERF Colloq. Vol., 2004.

56  Fintech and Cryptocurrency 27. D. Humphrey, M. Willesson, G. Bergendahl, and ..., “Benefits from a changing payment technology in European banking,” J. Bank. …, 2006. 28. P. K. Senyo, J. Effah, and E. L. C. Osabutey, “Digital platformisation as public sector transformation strategy: A case of Ghana’s paperless port,” Technol. Forecast. Soc. …, 2021. 29. H. Choi, J. Park, J. Kim, and Y. Jung, “Consumer preferences of attributes of mobile payment services in South Korea,” Telemat. Informatics, 2020. 30. J. Jagtiani and C. Lemieux, “The roles of alternative data and machine learning in fintech lending: evidence from the LendingClub consumer platform,” Financ. Manag., 2019. 31. N. Bussmann, P. Giudici, D. Marinelli, and J. Papenbrock, “Explainable Machine Learning in Credit Risk Management,” Comput. Econ., vol. 57, no. 1, pp. 203–216, 2021, doi: 10.1007/s10614-020-10042-0. 32. T. Balyuk, A. N. Berger, and J. Hackney, “What is Fueling the FinTech Lending Revolution ? Local Banking Market Structure and FinTech Market Penetration The FinTech Revolution Is Upon Us ! FinTech → Derived from ‘financial’ and ‘technology:’ products and,” in 2019 Community Banking in the 21st Century Conference, 2019, pp. 1–21. 33. S. Chishti and T. Puschmann, Using Artificial Intelligence in Wealth Management, no. 1955. 2018. 34. D. Tammas-Hastings, “Artificial intelligence will play an increasing role in wealth management,” LSE Bus. Rep., pp. 1–2, 2020. 35. X. Zhang and Y. Chen, “An Artificial Intelligence Application in Portfolio Management,” in International Conference on Transformations and Innovations in Management (ICTIM-17), 2017, vol. 37, pp. 86–104, doi: 10.2991/ ictim-17.2017.60. 36. G. Vaia, W. DeLone, D. Arkhipova, and A. Moretti, Achieving Trust, Relational Governance and Innovation in Information Technology Outsourcing Through Digital Collaboration, vol. 38. 2020. 37. M. Camilli et al., “Risk-Driven Compliance Assurance for Collaborative AI Systems: A Vision Paper,” Lect. Notes Comput. Sci. (including Subser. Lect. Notes Artif. Intell. Lect. Notes Bioinformatics), vol. 12685 LNCS, no. April, pp. 123–130, 2021, doi: 10.1007/978-3-030-73128-1_9. 38. D. Moulliet, J. Stolzenbach, A. Majonek, and T. Voelker, “The Expansion of Robo-Advisory in Wealth Management,” Deloitte, pp. 1–5, 2016. 39. D. Jung, F. Glaser, and W. Köpplin, “Robo-advisory: Opportunities and risks for the future of financial advisory,” Contrib. to Manag. Sci., no. January, pp. 405–427, 2019, doi: 10.1007/978-3-319-95999-3_20. 40. V. Seiler and K. M. Fanenbruck, “Acceptance of digital investment solutions: The case of robo advisory in Germany,” Res. Int. Bus. Financ., 2021. 41. A. Faúndez-Ugalde, R. Mellado-Silva, and E. Aldunate-Lizana, “Use of artificial intelligence by tax administrations: An analysis regarding taxpayers’ rights in Latin American countries,” Comput. Law Secur. Rev., vol. 38, 2020, doi: 10.1016/j.clsr.2020.105441.

Reshaping Banking with Digital Technologies   57 42. N. Abd. Wahab, S. Maamor, Z. Zainol, S. Hashim, and K. A. Mustapha Kamal, “Developing best practices of Islamic estate planning: a construction based on the perspectives of individuals and estate planning providers,” ISRA Int. J. Islam. Financ., vol. 13, no. 2, pp. 211–228, 2021, doi: 10.1108/ IJIF-03-2020-0052. 43. L. Munkhdalai, T. Munkhdalai, O. E. Namsrai, J. Y. Lee, and K. H. Ryu, “An empirical comparison of machine-learning methods on bank client credit assessments,” Sustain., vol. 11, no. 3, pp. 1–23, 2019, doi: 10.3390/su11030699. 44. S. Sarbabidya and T. Saha, “Role of Chatbot in Customer Service: A Study from the Perspectives of the Banking Industry of Bangladesh,” Int. Rev. Bus. …, 2020. 45. S. Cao, H. Lyu, and X. Xu, “InsurTech development: Evidence from Chinese media reports,” Technol. Forecast. Soc. Change, 2020. 46. R. Fujii-Rajani, “FinTech developments in banking, insurance and FMIs,” Reserv. Bank New Zeal. Bull., 2018.

4 Adoption of Fintech: A Paradigm Shift Among Millennials as a Next Normal Behaviour Pushpa A. 1*, Jaheer Mukthar K. P.1, Ramya U.2, Edwin Hernan Ramirez Asis3 and William Rene Dextre Martinez3 Kristu Jayanti College (Autonomous), Bengaluru, India 2 Reva Business School, Bengaluru, India 3 Universidad Nacional Santiago Antunez de Mayolo, Peru 1

Abstract

Any technology application embraced in finance is coined as financial technology otherwise known as Fintech. It describes the usage of any technology to assists delivery of financial services like online banking, mobile payment apps and cryptocurrency. The pandemic has put the world into a global health crisis tipping to a paradigm shift in consumer’s behaviour towards financial activities. People have adapted themselves to a new pattern in financial transactions like contactless payments, cashless transactions, online transactions and many more. There are greater chances for the end users to continue usage of fintech services during the next normal life (post Covid-19) as they have become familiar with the usage and convenience of fintech services. The chapter aims at providing insights to the exiting literature on evolution and emergence from Indian and global perspective, dimensions of business models and ecosystem, prepositions of fintech adoption using TAM and theoretical framework and justifies the proposed model. Keywords:  Adoption of Fintech, Covid-19, loyalty, perceived ease of use, perceived usefulness, social norm

*Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (59–90) © 2023 Scrivener Publishing LLC

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4.1 Introduction Innovation persists everywhere, enduring significant changes in all sectors. Technology changes are constant changes that have brought about unimaginable rapid changes. Technology advancements have made considerable changes in computer technology, telecommunication, production, etc. It has changed the world of finance as well. Any technology application embraced in finance is coined as financial technology otherwise known as FinTech. “Fintech” is the combination of two elements financial services and technology. It describes the usage of any technology improvement aimed at delivering financial services like online banking, mobile payment apps and cryptocurrency. Fintech includes a broad category of technologies that aims at changing the approach to handling financial transactions by customers and businesses. Fintech services notonly support as a backbone for companies and business houses to manage their operations and processes but also make consumer lives better by enabling them to use software/algorithms on computers and smartphones. Fintech a technological advancement intends novel product models and applications in financial services, widening the scope for improvement of the financial sector creating competition culture among the service suppliers, [1]. Financial know- how evolved after the credit and embraced several milestones in traditional financial institutions, startups, venture capitalists, crypto and regulators [2]. The Financial Stability Board (FSB) connotes FinTech” A technologically enabled financial innovation that could result in new products or business models, application, and procedures associating material effects on financial markets and institutions and the provisions of financial services”. Research relating to fintech can be categorised as one stream of studies that mainly focus on the revolution and its effect on incumbent financial contributes to the growth of understanding of the setups of FinTech platforms. The other work-stream emphasis on exploring the factors that impact the platforms of Fintech adoption. The broader intention to adopt FinTech platforms relies on an individuals’ reach to new technologies. Thus, behaviour towards adoption of fintech is regarded as financial technology adoption behaviour. The chapter is structured into 4 sections. Section 4.1 presents the concepts of Fintech, the Evolution and emergence of Fintech, both global and Indian perspectives, Dimensions of fintech business models, the Fintech Ecosystem, and the prepositions of Fintech adoption. The Section 4.2 exhibits contextual backdrop of the study on FinTech and millennials. Section 4.3 exposes theoretical framework and justifies the proposed

Adoption of Fintech  61 model. Section 4.4 uncovers the conclusion and implications for future empirical research.

4.1.1 Evolution of Fintech Financial technology is an endeavour to craft financial products and services that assist people financially through/by using technology. Fintech is the blend of technology and finance to enhance traditional methods of providing financial services. This start of this journey can be traced back to several decades before the end users’ individuals or institutions could download apps on their mobiles and make a transaction at the push of a button. The journey of evolution can be conceptualized in four stages from “Fintech 1.0 to Fintech 3.5”, presented in Table 4.1 below:

Table 4.1  Conceptualisation of evolution of Fintech. Key advancements

Key concepts

Key players

Overview

Fintech 1.0 (1886-1967) Building infrastructure

Increased efficiency through IT

IT vendors

the focus of I.T. is to boost the efficiency of existing services

transatlantic cable (1866) Fedwire (1918) Diner’s Card (1950) Credit Card by Amex in 1958

Fintech 2.0 (1967-2008) Development of traditional financial services

Analog to digital

fintech Startups

Application of new technology with API

ATM by Barclay’s in 1967. Telex (1966)

Fintech 3.0 (2008-2014) Startup Era

API Ecosystem

Large startup companies

Advancements in API

API Blockchain A.I.

Fintech 3.5 (2014Current) Emerging markets

nonlinear rise of the two most populous countries in Fintech;

API players

Rebundling of unbundled financial services

IoT

62  Fintech and Cryptocurrency Fintech 1.0 (1886-1967): Building infrastructure This era laid the foundation for the fintech revolution and aimed at increased efficiency and sophistication in finance functions. This phase was described as a stage of building the infrastructure to support the globalization of financial services in Fintech 2.0. The key event during this phase was the transatlantic cable in 1866, followed by Fedwire in 1918 in the USA, which facilitated the first automated fund transfer. FinTech 2.0: (1967-2008) Disrupters unbundle financial business This period began in 1967, indicating the move to digital from analog guided by traditional finance institutions. This phase marks the unveiling of the ATM usage at Barclays bank and the first ever handheld calculator indicates the onset of contemporary epoch of FinTech. Many significant progresses took shape in early 1970s, like the digital stock exchange, NASDAQ, and Society for worldwide interbank (SWIFT) in 1973. During 1980s there was shift to mainframe computers in banks introducing them to online banking advancing to 1990s, the advent of internet and e-commerce business simulations. In the beginning of 21st century, the banks were fully digitalized in processes and interactions with clients and customers. The era ended in 2008 due to the Global Financial crisis. Fintech 3.0: (2008-2014) Start up Era The global financial crisis during 2008 led to the distrust of the traditional banking system by the public, paving the way for a new fintech era. This paved the way for the inception of the first digital decentralized currency, the Bitcoin (2009). Also, digital wallets like Google wallet (2011) and Apple Pay (2014) came into existence. During this phase of evolution, new technology innovations came into the application, key technologies include A.I. (Artificial Intelligence), and blockchain technology bring about APIs in finance. Fintech 3.5: (2014-Current) Emerging markets This phase of evolution signals the move away from the developed world toward developing countries. The emerging countries are not burdened with complex physical banking infrastructure as they are the early adopters of fintech solutions. As of date, the two emerging countries inclining to the usage of Fintech are China and India. The fintech 3.5 era symbolizes combining financial institutions and other businesses with new financial services.

Adoption of Fintech  63

4.1.2 Technology Innovation in the Financial Sector Building a Digital Future Fintech refers to innovations in financial services backed by innovations in information and communication technology (ICT). The epoch of Industry 4.0, indicates the evolution of Fintech, transforming the financial industry. Over the past few years, every aspect of the finance industry has been disrupted virtually by fintech companies. The chronicle of technical innovations in the financial sector instigated with the arrival of cheques to make payments (1945). The advent of Fintech can be traced back to the early 1950s when Bank of America supplied credit cards in 1958, ATM in 1967 emerged to manage the financial transaction, followed by the advent of transaction tool the debit cards. In the late 1990s, aided by the internet, Fintech revolutionized different markets, remarkably the banking and insurance sector when internet banking was unveiled. Today, Fintech covers a broad category of technologies challenging the traditional financial infrastructure as more services transition to a new technology paradigm, most notably the payment apps on the mobile wallet, which intends to lessen the storing and handling of physical cash and augments online transactions. Fintech advancements of mobile payments and crowdfunding were initiated in the 2000s. The fintech industry is surging, ensuring secure, simple, and superior online banking services, [3]. In the 21st century, Fintech has provided opportunities like making payments online, checking balances, and executing account transactions, [4]. Over the years, Fintech advanced and introduced numerous signposts to the mass market like digitalized stock exchanges, online stock exchanges and bank mainframe computers. Each change brought a new milestone that we never thought about in the infrastructure of the banking sector. Growth of Fintech - Global perspective According to the report of Allied Market Research (AMR) report, global fintech market is anticipated to grow from $110.57 bn in 2020 to $698.48 bn by 2030, with a CAGR of 20.3% by 2030. Elements that drive the progress of the fintech global market in terms of improved focus on financial regulation, maintenance of transparency and convenience in terms of financial inclusions and assimilation of progressive technologies like Artificial intelligence (A.I.) and Machine learning (ML). The report also mentions that Regionwide, North America is and would retain the dominant share during the period and application wise, the banking segment ran the top market share in footings of revenue. Fintech, is a teamster in the digital financial sector in its advancement, has the resilience and capability to acclimatise to anomalous environmental

64  Fintech and Cryptocurrency conditions. The outburst of the Covid-19 pandemic is an impetus to develop a product application for the fintech industry. The ultimatum for fintech knowhows all through the Covid-19 pandemic amplified with a upsurge in the usage and embracing of online and digitalized financial products among the customer across the world. New opportunities are awaited in the coming years in developing countries with promising expansion of offerings, rise in literacy rate, rapid urbanization and increase in the techno-savvy population. The below Figure 4.1 depicts the top 10 global fintech deals during 2021 and total value of Investments in fintech companies is shown in Figure 4.2. Top 10 Global Fintech Deals in 2021 U.S. $ billions Tink (Sweden)

$2

Sofi (U.S)

$2

Itiviti Group (Sweden)

$2

Paidy (Japan)

$3

Verafin (Canada)

$3

Robinhood (U.S)

$3 $4

Adenza (U.S)

$9

Nets (Denmark) Refinitiv (U.K)

$15

$0

$2

$4

$6

$8

$10

$12

$14

$16

Figure 4.1  Top 10 global fintech deals in 2021(in U.S bn dollars). Source: statista.com. Investments in Fintech (billion U.S dollars) 250 213.8

210.1

200 148.6

150

124.9

100

0

67.1

63.4

59.2

2015

2016

2017

45.4

50 9

6

4

2010

2011

2012

18.9 2013

2014

2018

2019

2020

2021

Figure 4.2  Total value of Investments in fintech companies worldwide (U.S bn dollars). Source: statista.com.

Adoption of Fintech  65 The total worth of funds into fintech establishments worldwide boosted significantly amid 2010 and 2019; it stretched to $213.8 billion. However, during 2020 the total value of investments saw a drop more than one third with a value of $124.9 bn, nonetheless in 2021 the outlay saw an upsurge up to $210.1 billion. The report registered that America is appealing the highest funds in the sector region-wise, reporting for roughly 80% of the total. Sector-wise analyses listed that the payment sector was the most popular sector that attracted the lion’s share in the global funding with $51.7 billion. The significant players in global fintech markets include Bankable, Blockstream Corporation Inc., Ant Group Co. Ltd., Paypal Holdings Inc., Tencent Holdings Ltd, Robinhood Markets Inc., Google Payment Corp., Circle Internet Financial Limited, Cisco Systems Inc., IBM Corporation, Goldman Sachs, Oracle, and TATA Consultancy Service Limited., and many more. Growth of Fintech – Indian perspective The KPMG report (2021), the Indian fintech sector invited over $2 bn in investment during the first half of 2021. According to the fintech market report 2021, the fintech market was appreciated at INR 2.30 Trn and is anticipated to reach INR 8.35 Trn by 2026, with a CAGR of 24.56% for the period 2021 to 2026. The report added that as of 2020, India stands as the biggest destination for investments worldwide with an utmost adoption rate of 87% than the global rate of 64%. The Fintech sector in India has realised funding of $8.53 bn (in 278 deals) in FY-22. The Blinc Insights report added that the rapid pace of growth in the Indian fintech sector is backed by accelerated digitalization. The ecosystem of Indian Fintech industry consists of a broad category of sub segments, comprising Lending, Payments, Personal Finance Management, Wealth Management (WealthTech), Insurance Technology (InsurTech), Regulation Technology (RegTech), and many more. Below is the Figure 4.3 showing the trend of finTech funding in India. FinTech Funding in India

227

258

305

280

257

150

$922M 2016

$3.7B 2017

$2.1B 2018 Funding

$4B 2019

$2.7B 2020

$3.1B 2021

Rounds

Figure 4.3  Total value of finTech funding and rounds. (Source: Blinc Insights).

66  Fintech and Cryptocurrency During the AY 2020, Bengaluru based payments firm Navi Technologies attracted the highest investment of $397.59 million from the Angel funds, followed by Pine Labs, a Noida based company which attracted an amount of Rs.300 million from a private equity player, and Razor Pay with $100 million from GIC of Singapore, among few other firms making them a unicorn. The secret to the progress and market success of the Indian Fintech sector originates from the integrated ecosystem. A lucrative fintech ecosystem empowers the fintech market participants to get connect, engage, and share notions across vivid networks and groups adapts opportunities into industry. In the present era of a technology-driven society, no market participants can operate in silos. In the beginning of 2022, Indian Unified Payment interface (UPI) has grasped the involvement of 313 banks and has documented worth $5.4 bn monthly transactions over $128bn also 16 fintech companies have gained the “Unicorn status” with a estimate of over $1bn. The key player in the Indian fintech market include Paytm, Razorpay, Pine Labs, Groww, BharatPe, Policy Bazaar, CRED, Digital Insurance, CoinSwitch, Zeta, Acko, Vedhantu, etc.

4.1.3 Taxonomy of Fintech Business Model There are plenteous forms of fintech platforms, different businesses like B2B, B2C, and P2P use fintech services to conduct business. Innovative models witness the growth of Fintech. FinTech companies fall into two distinct categories; they focus on consumers or businesses. Technology advancement is the crucial element that brings out software solutions to make business procedures and processes and everyday man life more tolerant. Fintech platforms first aim to provide customized services by understanding the future needs of end-users and to enrich the customers’ experience by providing personalized/customized services. Secondly, it focuses on quickly rendering service faster by assisting businesses and customers with incomplete processes/financial operations and transactions. Fintech companies use the API (Application Program Interface) system to provide services in the best possible way with the assistance of technology providers. Thirdly, they ensure 100 % safety and convenience in dealing with multi-currencies and mobility. End users can complete their transactions at remote locations. The financial innovations encompass payment services, digital lending, insurance, savings and wealth management, remittances, POS (point of sale), and RegTech. Mobile payments, e- commerce, risk management, customised consulting, virtual currencies, [5] portfolio management, [6]. FinTech products encompass six areas, comprising crowd funding, crowd lending and peer-topeer lending (digital financing, mobile trading (digital investment), electronic

Adoption of Fintech  67 money and cryptocurrency (digital money), m-payment (digital payments), Robo-advisor (insurances and financial advice) [7]. [2, 8] together developed six business models in fintech, namely payment, wealth management, crowdfunding,Peer to Peer (P2P) lending, capital markets, and insurance services, personal financial consulting services, crowdfunding, virtual currencies, and cyber security. A comprehensive list of fintech models is widespread among individual clients or financial institutions. SMEs and corporates. Seven fintech business models, along with their operation mechanism, value prepositions, and significant companies in each fintech business model are shown in Figure 4.4 and discussed below. Payment business models It is the concept of digital banks through which an end-user can operate his current and savings accounts. The rise in cashless payments has enabled e-commerce players to roll out different business models. These models focus on improving the experience for end-users looking for a modernised payments experience in terms of multichannel accessibility, speed, convenience. This model serves two markets, namely, customer and retail payment: wholesale and corporate payments. Some widely used and popular applications included Apple Pay, Samsung Pay, Square Cash, Google Wallet and Venmo. Wealth management model An investment advisory platform that combines other financial services to address the need of affluent clients with cutting-edge technology such

Payment models Wealth management model

Insurance Services model Fintech Models Capital market model

Crowdfunding model Lending model

Figure 4.4  Dimensions of Fintech business models. (Source: Author compilation).

68  Fintech and Cryptocurrency as Artificial intelligence and Machine learning to manage portfolios. It is an automated wealth management advisor (Robo-advisors), that provide holistic financial advice to the affluent client’s wealth. These models aid from users shifting demographic and behaviour commending for computerized and unreceptive investment strategies for a delicate and straightforward fee structure. Some wealth management apps include Planto, Chloe, Gini, Mellow, Wealthfront, Motif and Folio, Supersplit, Moneyview, and Monefy. Crowdfunding model The digital era has enabled online platforms for fundraising for business ideas and non-profit causes for personal needs through the crowdfunding business model. Almost $73.93 billion in funds have been raised across in United States and Canada alone using online platforms in 2020. Crowdfunding is a method of arranging funds to create capital for entrepreneurship ventures/ startups like artistic and creative projects or startups, rewards or ideas or donations from individual investors through online, social media or websites. It encompasses three parties, the project entrepreneur, contributor, and the moderator. The entrepreneur is a project initiator who need needs funds; the contributor is concerned in assisting the project, and the moderator is the institution that accelerates the engagement between the contributor and initiator. The moderating or regulating institutions facilitate the providers/contributors to use the information regarding the myriad of ventures and financing prospects. The most popular crowding business models are reward-based crowd funding, donation-based crowd funding, and donation-­based crowd funding. The business rewards the project’s supporters for funding them, and donation is a route to source money for charitable projects from the donors. Few models of reward crowdfunding platforms are Crowdfunder, RocketHub, Kickstarter, and Indiegogo. Equity-based crowdfunding platforms include SyndicateRoom, CrowdFunder, Crowdcube, Seedrs, AngelList, Early Shares. Donation-based funding platforms comprise GoFundMe, GiveForward, and FirstGiving. Crowdrise, Fuel a Dream. P2P Lending model Peer to Peer lending allows entities and individuals exchange finance directly amongst individual users and companies to lend/borrow without effective intermediation from the traditional financial institutions. This online platform offers ease of use, choice, and flexibility of advancing and borrowing funds to the lender and the borrower as they simply match the lender with the borrowers with a nominal fee. Crowdfunding and P2P lending are dissimilar in purpose; crowdfunding is with the drive of funding projects, whereas P2P lending’s purpose is debt alliance and credit card

Adoption of Fintech  69 refinancing, [9]. Lenders are enticed by access to the market, risk diversification, and lower transaction cost, but borrowers are enticed by information transparency (speed and availability). Some of the leading Fintech is Lending Club, Prosper, SoFi, Zopra, and RateSetter. Capital market model The financial technology innovations have disrupted and re-imaged the functioning of capital markets, both primary and secondary markets, including equity and bonds. The model holds across the broad spectrum of capital market spots like investment, trading, foreign exchange, and research. Among the spectrum of capital market areas, Fintech in trading is promising; trading fintech connects the investors and agents to deliberate and share information, buy and sell securities (commodities or stocks) and monitor the risk involved. Also, the foreign exchange transactions are covered by the fintech business solutions for capital markets. Individual clients and businesses widely accept it as it lowers the barriers and costs for the participants of capital market transactions. This model lets one view live pricing, send or receive funds in different exchanges firmly using mobile devices. The capital market fintech platforms include Robinhood, Estimize, eToro, Magna and Xoom. Insurance services model Fintech innovations have provided vital benefits like efficiency enhancements, cost cutbacks, risk evaluation, superior customer experience, and higher financial inclusion. The insurance fintech business model is the best adopted by the traditional insurance providers, enabling a more direct association between the insurer and the customer. It uses data analytics to assess and fit risk, and as the group of incumbent customers expands, they are offered products that meet their needs (insurance for car, life, healthcare, causality insurance. etc.). The disruptive innovations in the insurance sector supplement the traditional models of data collection and improvise risk analysis. Fintech innovations that have disrupted the insurance sector include platforms like Coverfox, Censio, Sureify, Ladder and The Zebra.

4.1.4 Fintech Ecosystem Fintech has gained popularity due to the conducive fintech ecosystem. The fintech industry’s growth hangs on exactly how the players within the ecosystem relate [10]. The financial ecosystem refers to the advancement and acceptance of new technologies to disrupt the traditional banking system. It comprises startups, artificial intelligence, blockchain, cloud computing, and many more, making financial services more accessible and practical.

70  Fintech and Cryptocurrency The fintech ecosystem can be split into six main stakeholder groups: fintech startups, tech developers, financial consumers, incumbent financial institutions, and regulators. The participants of fintech ecosystem include entrepreneurs, financial and government institutions. The elements of the ecosystem contribute symbiotically to innovation, fuel the economy, encourage collaboration and enhance competition in the fintech industry, finally benefit the users. Figure 4.5 illustrates six components derived from the study. The players in the fintech ecosystem in reshaping the financial services landscape are, firstly, the Investors like private equity houses, venture capitals, and angel investors etc., who consider the fintech providers as the next golden goose. Secondly, the traditional financial establishments like banking, insurance, stock brokerage companies, venture capitalists and financial service providers are a fragment of the fintech ecosystem, as they need ways to leverage technology advent and reduce the cost of business operations. Third, Government and financial regulators need to construct suitable laws to protect the end-users and guidelines for fintech service providers; the fintech industry needs to work with these parameters to build Trust among the end-users. Fourth, the universities and research institutions bridge the industry-academia gap by instructing curricula that focus on incubation and entrepreneurship skills that focus of fintech. Fifth, companies need to launch incubators for fintech experiments and the development of fintech services like- big data analytics, crypto, social media developers and cloud computing. Finally, end-users who are the most important for the existence of fintech companies; remain the

Investors Traditional financial institutions

End Users

Fintech Ecosystem Government and Regulators

Incubators

Universities/ research institutions

Figure 4.5  Players of Fintech ecosystem. (Source: Authors compilation).

Adoption of Fintech  71 imperative cogwheel of Fintech. The end-users represent both individuals and organizations. These elements symbiotically improve, accelerate the economy, and enable alliance and competition in the finance industry, eventually benefiting end-users. Interaction among the participants acts as crucial aspect in the development and permanence of the fintech sector. Table 4.2 features the important drivers contributing to the growth of the fintech sector. Table 4.2  Drivers of fintech growth. Drivers

Facets

Talent

The surge in investments in tech-related disciplines (A.I.) like Oxford University and Harvard University and the Return of foreign-educated talents.

Era of Technology

Emerging know-hows like 5G, cloud computing, blockchain, augmented reality, IOT (Internet of Things) and AI (Artificial intelligence).

Funding

Seed capital and other forms of financing Start-ups.

Regulators

Strict regulatory and compliance laws by governments to regulate the services offered by the fintech units.

Financial service integration

Traditional financial institutions integrated and partnered with independent fintech suppliers.

End-user base shifts

Millennials and Gen Z, known as the generation of the digital world, form 30% of the world population as per Forbes. They are characterized as a techno-savvy generation as they are exposed to technology with a high preference for the cutting-edge automated, quicker, and more efficient technology and services than the legacy payment systems.

Increased security, less fear

End-users have a Lack of Trust in traditional banking as Fintech promises security and fearless transaction with Biometric authentication of a person with biological and structural characteristics, it includes fingerprint scanners, facial/iris recognition, vein mapping etc.

Borrowing & Lending money

Access to funds has become transparent and less centralized, shifting from traditional banking methods to services like crowdfunding and peer-to-peer lending.

(Source: Author compilation)

72  Fintech and Cryptocurrency

4.1.5 Prepositions for Fintech Adoption According to EY insights on the fintech adoption index, the consumer segment tends towards fintech prepositions. The reports from EY insights reveal the global adoption rate as 64%, indicating that Fintech is taking over as a global mainstream. The consumer fintech adoption rate across 27 markets is shown in Figure 4.6. This suggests that Fintech offers several benefits; the benefits are categorized as follows: Choice Traditional financial institutions provide as many financial services as possible under one roof; fintech providers provide advanced innovations. As such, customers have a wide choice of financial services from providers, meaning flexibility. Customers can choose any fintech solutions that best suit their needs, adding to their traditional banking habits. Transparency Over the past few years, the finance sector has seen an undoubted transformation from a simple mobile banking app to an insurtech platform. The fintech solutions have simplified the tedious financial activities and processes, stimulating the world that is reliant on technology. The usage of

Average adoption rate (%) Bel & France, 35 Lux, 42 Canada, 50 USA, 46

Japan, 34 China, 87 India, 87 Russia, 82

Italy, 51 Spain, 56

South africa, 82

Australia, 58 Colombia, 76 Switzerland, 64 Peru, 75

Sweden, 64

Netherlands, 73 Germany, 64 Brazil, 64

Mexico, 72

Chile, 66 South Korea, 67 Singapore, 67

Ireland, 71 UK, 71 Hong Kong, 67

Argentina, 67

Figure 4.6  Consumer adoption rate. (Source: EY insights).

Adoption of Fintech  73 Fintech has seen a drastic increase for fintech solutions for payments and online money transfers among the fintech apps for insurance, investments, savings, financial planning, borrowings etc., A boon during Covid-19 Moreover, the adoption of Fintech has even more noticeable increased due to the Covid-19 pandemic, a situation that forced individuals across the globe to stay indoors and use digital solutions to manage their everyday financial transactions. With social distancing measures and staff reductions, the COVID-19 pandemic has contributed to the rapid rise of Fintech. Fintech solutions have offer both affordable and transparent ways to complete payments. The improved visibility in financial transactions because of innovative solutions like artificial intelligence, improved data analytics, blockchain, etc., has enhanced service delivery, enabling users to track their transactions. Price All fintech services usage include costs, whether conversion rates, processing fees or commission. Today’s users are attentive to costs, so fintech solution providers must include as little cost as possible and be competitive. Most of the fintech solutions, compared to traditional banks, offer lower prices to their consumers and businesses. Speed Financial institutions relying on traditional means and age-old processes do not confirm speedy services. However, fintech solutions guarantee speedy services as they use artificial intelligence, automation, or work algorithms to speed up digital payments and online payments. Today’s fastpaced digital world expects and enjoys speed and agility to adapt; it also means accessibility. The encroachments of Fintech have made it possible for traditional financial institutions to fasten their processing and approval of applications resulting in a better and more satisfying user experience. Literature shows substantial improvement in the fintech infrastructure, specifically the launch of new payment mechanisms and interfaces like IMPS (Immediate Payment Services), UPI (unified payment interface), and other mechanisms speed the financial transactions. Convenience Nowadays, customers anticipate convenience in all transactions in their lives, and fintech companies have assumed to meet their need for faster and quicker transactions with the disrupted technology advancements.

74  Fintech and Cryptocurrency It is understood that fintech solutions depend on the internet and mobile connectivity. This accords the financial institutions reach wide customers or end-users and enables them to reach them back at the touch of a button. Fintech solutions are tailor-made as preferred by the customers. They are flexible in terms of time and location, providing convenience to the clients. Fintech has helped traditional banks adopt chatbots, enabling customers easily accessible in many languages, thus enabling financial intuitions to come out of their traditional means of relying on in-branch appointments that demand patience on the client’s part.

4.1.6 Challenges of the Fintech Industry Over the years, Fintech has drastically changed how people engage in their financial activities. Digital advances and trends in the fintech industry have improvised and automated the process and services within organisations, paving the way for growth and building reputation in the industry. This has transformed how people and financial institutions manage their money. However, there are challenges faced by the fintech industry, pushing them to imagine new ways and unparallel growth. Some of the challenges faced by the industry are: Data Security and Privacy There is always a question of risk in terms of security and privacy in the usage of fintech applications. Unlike traditional banking, the nature of the fintech business is that it stores enormous user data like credit card numbers, security codes, account statements, etc. The use of smartphones and online banking, mobile banking, payment apps etc., has put the information at risk of transit. However, on the other hand, data obstructing financial data seems easier. Regulatory and compliance law A safe fintech ecosystem demands a stringent regulatory framework to control and regulate the services provided by fintech entities to avoid fraud and data theft. However, these regulations and laws inevitably make it difficult for fintech startups/companies to complete a vast list of formalities before they begin their operations or enter new markets. Focus on User Retention and Customer Experience User retention and experience are significant concerns for the fintech sector. Fintech is complex, as the fintech app should manage to balance user experience and security. Though Fintech has changed swiftly, enabling

Adoption of Fintech  75 procedures to create an account simple and accessible, bots offer information to users’ conversation UI to simulate speaking with a natural person. Fintech offers services that are neither easy to break nor too hard to access. Likewise, though they can access an app with two-factor authentication promising security, this could frustrate the user and lead to a bad experience. Hence, there is still much ground to be included in developing a seamless user experience that goes beyond the simple user interface. Acquiring long-term users In the contemporary scenario, where most people still use traditional banking services, understanding their niche, target audience, and strategies to acquire new and long-term users is a stunner challenge. Offering the best product is not what your users would expect in this competitive world. It is important for a fintech service provider to endorse himself informing the end users about the innovation. A solid and effective marketing strategy includes collaborations, advertising and many more boosting the popularity of the brand. It can thus be concluded that fintech start-ups or businesses need to frame strategies that augment competitive advantage for the business. Finding a winning business model Another critical challenge for a fintech industry is coping with the economic downtrend; most fintech businesses use cost-cutting tactics like employee reductions and wage cutbacks. There is a need to adapt or extend their resources and reconsider their revenue and expense strategies. They need to cope with the higher transaction volumes, contactless payments and many more and alter their business models. Startups should spend only on the necessary categories like hiring specialists necessary for business, avoid rapid expansion and expensive teams, reduce overspending on sales and marketing before establishing the market, present minimal viable products etc., Fintech face challenges in the way they earn money; they can cope with this by raising small-ticket loans because of low margins and high risks, offer Payment gateways acceptance and payment processing services at affordable rates for small businesses, partnerships with other businesses based on their customers demand and offer them suitable products from partners at special prices and many more.

4.2 Statement of the Problem and Research Questions Fintech is a technology advancement that intends new product applications and models in financial services, widening the scope for advancement of

76  Fintech and Cryptocurrency the financial sector creating the culture of competition among the fintech service providers. The pandemic has put the world into a global health crisis, tipping to a paradigm shift in consumers’ behaviour towards financial activities. People have adapted themselves to a new pattern in financial transactions like contactless payments, cashless transactions, online transactions, etc. The World Trade Organisation (WHO) urged end-users to utilize contactless payment methods as a substitute for the conventional mode of payment -cash transaction as it can be a carrier of the novel virus. This suspected risk of contracting the novel virus changed the end users’ point of view toward day- to-day activities that need face to face contracts, banking, and payment systems. In this backdrop, the fintech industry and financial industry have sustained drastic growth during the pandemic. There are greater chances for the end-users to continue using fintech services during their next everyday life (post-Covid-19) as they have become familiar with the usage and convenience of fintech services. On the other side, it is a challenge for the service providers to retain the existing customers and attract new users. Furthermore, Millennials are more receptive to Technology advancements as they have grown up with the internet. The Salesforce research claims that 37% of millennials relate to tech companies among the age groups. Millennials would be the primary users of both banking services and Fintech. ETBFSI (Sep 2021) posits that Fintech is enticing millennials, and fintech firms target the digitally techno-savvy millennials as their target of the new age. Consequently, there is a need to investigate the characteristics that induce the user’s intend to embrace fintech payment apps post covid-19. Past studies indicate a dearth of literature in this area of a study showing unanimity among researchers about the variables studied relating to the phenomena of adopting online business, including Fintech. This study implies providing insightful hindsight to the existing literature and business community to tap the rural markets where only 22-28% of the Indian population have an option to access internet facility and frame strategies to improve financial infrastructure with financial literacy.

4.3 Research Questions and Objectives Contemplating the dearth of this area of study, some additional research questions need to be explored to increase the knowledge on fintech users’ continuance of usage after the COVID 19. This study is based on the research questions outlined in this section. The fundamental questions

Adoption of Fintech  77 trailed after in the study process precisely determine the study’s objective. In this research, below mentioned questions are evaluated simultaneously; Fintech and Covid 19 implications. The main research questions concerning the study are: Q1: What are the precursors of FinTech that have transformed the landscape of the finance sector? Q2: Propose an acceptance model to foretell persistence of online transaction financial transactions post Covid-19. Q3: What is the role of Covid- 19 as a precursor to the adaptation of fintech services? For the present study, two core objectives are deliberated: firstly, to explore the precursors for adoption and usage of FinTech during covid 19 and secondly, to study intention to adopt and use of FinTech services postCovid 19, i.e., loyalty.

4.4 Conceptual Framework and Proposed Model 4.4.1 Conceptual Framework Fintech, the evolving sector in the 21st century is defined as a tech-based business that collaborates with financial institutions. Few researchers explain Fintech as an interdisciplinary topic that is a blend of finance, and technology, and innovation management, [11]. Fintech as an industry consists of financial businesses that have transformed over decades; to expedite their service quality with innovative service delivery and enhance management effectiveness by exploiting the new cohort of information technology [12–14]. It has ensured the development of the finance sector, slashing the transaction cost, facilitating convenience using mobile phones [15–17] and promising security [18, 19]. Fintech is a technology advancement that intends new product applications and models in financial services, widening the scope for advancement of finance industry creating a society of competition amongst the fintech service providers

4.4.2 The TAM Model There are numerous studies on users’ behaviour toward information technology in areas of psychology, sociology, and information system research [20, 21]. The literature in past three decades exhibit that researcher have

78  Fintech and Cryptocurrency adopted various theoretical strategies to analyze technology adoption. Among the available theories of adoption, the oldest theories applied to envisage adoption behaviour, Theory of reasoned action (TRA), [22]; TAM (Technology Acceptance Model) by [23, 24]; UTAUT (unified theory of acceptance and use of technology) an extended TAM [25] is another grounded framework which is commonly used in various multidisciplinary studies. The extended TAM (UTAUT) used key constructs: namely., perceived ease of use, perceived usefulness, facilitating and social norms. The Innovation diffusion theory, proposed by [26] reveals how new innovations and ideas are accepted or adopted. TRA intends from the notion of behavioural science; it justifies that behavioural intention is impacted by social norms and attitudes, [27]. TAM is drawn from the defect of the Theory of reasoned action. The Theory applies psychological factors to study consumer adoption or acceptance. There are ample studies supporting the reliability and validity of perceived ease of use and perceived usefulness. [28–33], it has advanced as one of the widely accepted and applied models in the field of technology acceptance/adoption research. Though all the theories contribute to the research in acceptance or adoption of information technology, Researchers have seldom used the theories except TAM and UTAUT theories. Furthermore, each paradigm ignores the contribution made by the other model. Some of the studies have evaluated fintech acceptance from the contextual factors reminiscent of social influence, Trust, and risk [20, 34, 35]. Some of the studies have focused on technology factors and overlooked the social factors, [36, 37]. Prominent investigators have adopted TAM and UTUAT models and empirically tested and proved significantly in measuring the user’s acceptance/adoption of technology, [20, 38–45]. The aspects of TAM have been adopted in numerous studies connecting COVID-19 as an influencer on acceptance of technology. [46] observed the association amongst utilitarian, hedonic, normative precursors that arouse intention among users to embrace online shopping during times of curfew. [46] experimental the influence of Trust on online purchase intention during Covid 19. [47] explored changes in users’ patterns in digital banking services during demonetization [48] aimed to document the effects of the COVID−19 pandemic on digital finance app adoption. The study measures the Loyalty of end-users after the forced situation, the pandemic because if users are satisfied and contented with the services of Fintech, they tend to be loyal as they continue using them, [49]. There is very little literature, and hence, the study contributes theoretically to the extended model TAM by weaving PRC19 with the subconstructs of TAM2. Considering both behavioural and adoption attributes, the paper aims to

Adoption of Fintech  79 propose a model for a future empirical study. The model is projected with Social Norm (S.N.), Trust (T.R.), perceived ease of use (PEOU), perceived usefulness (P.U.), intention to adopt, and Loyalty is proposed in the model for future empirical research to explore if these variables influence millennials adoption intention of fintech services during and post-pandemic as following normal behaviour.

4.4.3 Proposed Model and Hypothesis Framed Using the extended TAM model, the study proposed a research model to analyze the paraphernalia of perceived Ease of use, Trust, and social norms, on adoption intention of Fintech mediated through perceived usefulness and its impact on the adoption of Fintech as a pre and post-adoption behaviour (Loyalty) of end-users of Fintech can be investigated. The proposed framework proposed is shown in Figure 4.7. Perceived usefulness, and intention to adopt fintech services Perceived usefulness is described as the assumption of a user that using a particular technology enhance the job efficacy, [50, 51]. The operational definition according to TAM describes P.U. as the degree to which the users find the usage of fintech services helpful; based on the scale developed by [23], the study adopted a list of attributes for P.U. Adoption of Fintech services assures rapid completion of the task, cutting the travel time, and lessen paperwork, [52, 53]. Past studies point out that P.U. has a significant influence on intention of users to adopt fintech applications like online purchases as they provide a quick shopping experience, [34, 54, 55] information technology, [52, 54, 56, 58–60]. The ubiquity of Fintech Social Norms

Trust

Perceived Usefulness

Adoption of Fintech

Perceived Ease of Use

Fear of C19

Figure 4.7  Proposed framework. (Source: Author compilation).

Loyalty to use fintech

80  Fintech and Cryptocurrency services paired with convenience exhibits a greater perceived usefulness, thus leading to a higher intention to adopt and use FinTech services. The millennials are tech-savvy individuals who are employed and consider costs and benefits in their daily decisions. Based on literature, study recommends the first hypothesis that P.U. of fintech services intensified during the pandemic positively influenced the adoption behaviour of millennials. Hence, perceived usefulness is proposed in the framework. Perceived ease of use, perceived usefulness, and intention to adopt fintech Perceived ease of use (PEOU) is regarded as one of the precursors in persuading the acceptance of new technology. It indicates to the end user’s perception that using a particular technology is easy or effortless [23]. It is can also be defined as an individual’s viewpoint on use of technology, that says users would be able to be free from mental stress and need not have to dedicate a lot of their effort and time to use it [50, 57, 61]. This impacts on individual’s intention to use technology and envisages the perceived usefulness. There are a relatively few research experimented on users’ PEOU and intention to adopt the technology, and most of the studies postulated that PEOU has an affirmative and direct impact on the user acceptance to adopt technology, [15, 62, 63]. Summarizing, the findings of past studies it isobserved that there is a theoretical correlation between POEU and adoptionof Fintech, it is the direct forecaster of user’s intention to adopt technology. Thus, the study hypothesis that POEU of digital payments positively induce the millennial’s intention to adopt digital payments and find them useful and helpful during the pandemic period. Social norm, Perceived usefulness, and intention to adopt Fintech The customer’s perception of technical characteristics, the requirement to use and attitude toward it is influenced by social norms, statements and actions of significant family members, friends, and colleagues. Positive endorsements from the social groups (Friends, family members and Colleagues) persuade them to adopt new technology, [64]. It is assumed that an individual always consults his surroundings about new technology advancements and can be swayed. S.I. refers to the extent an individual is persuaded to use a particular technology. Studies hypothesize that Individuals are swayed by the beliefs and attitudes of people around them in the social media epoch, [65]. In the present study, social influence (S.I.) is identified as the social norm (S.N.), an individual’s view about others (friends, family, colleagues, and relatives, who think that the individual ought to use fintech platforms, [66].

Adoption of Fintech  81 In addition, studies have suggested that individuals’ inclination toward fintech services like mobile payment, online banking, online games, and mobile payments are positively associated with social influence. Opinions of social groups shared face to face on any means of social media plays a vital role in enticing adoption behaviour [20]. The social norm is studied as an essential precursor to behavioural intention in the two crucial theories TRA and TPB. During medical emergencies, i.e., Covid-19, news updates, safety measures and concerns about the crises were propagated through traditional media across the globe; this led to severe changes in the way people performed their day-to-day activities. [67] found that S.N. had a significant effect on behaviour intention of using fintech services by Gen Y during Covid 19. Recent studies exhibit that expert reports/views in media have a direct influence on consumers behavioural intention of purchasing online during Covid 19 pandemic, [68] analysis of review suggest that it is reasonable to understand the influence of social norms on behaviour intention. This study hypothesizes that information shared in communication media and interest about the current situation represents S.N. an influencer of individual decisions on dealing their daily financial transactions. Precisely, we propose to forecast that SI influences millennials intention to adopt, motivating them to use adhere to the security measures of using mobile payments to avoid cash transaction. Hence, Social Norm is proposed in the framework. Trust, perceived usefulness, and intention to adopt Fintech Previous studies have presented a positive impact of trust on PU and adoption intention [69–71]. Trust (TR) indicates one’s faith on an exchange activity, associated with reliability and integrity. Clients adopt a new technology advanced or a new service with ease only when it promises safety and fewer feeling of risk. Transparency in terms of security and privacy form the critical elements of fintech services that users think of and select the services, [52, 72]. The users are much concerned about leakage or theft of information both personal and official, they expect the service providers be more translucent in data collection for the online transactions and promise data security of the users, this eventually contributes to the repute of the service providers among its competitors. There is no doubt that if customers confidentiality is protected, they desire to use increases and will continue using the services, [14]. Thus, fintech firms offering high security and privacy attracts users trust and retain customers for a long term. It is of great sense to study how trust affects the attitude of potential users and their willingness to adapt.

82  Fintech and Cryptocurrency But risk is the inherent characteristic of fintech, researchers have identified trust as a factor that is closely related to brand image and perceived risks and the more the users trust the service provider, the user parades more willingness to use the service, and it becomes easier for the service providers to frame strategies to attract customer. Hence, Trust is proposed in the framework. Fear of Covid-19, adoption of Fintech and loyalty Researchers have deliberated that Perceived risk (P.R.) significantly impacts the intent to use technology, [45]. The first to debate perceived risk (P.R.) as an instigator on consumer purchase decisions was Bauer, 1960. In the study of the adoption of fintech services like digital payments, online payments etc., “privacy and security” is identified as the primary risk factor influencing user intention [59]. Nevertheless, there are minimal studies that have concentrating on changing consumers adoption and usage intention of fintech services like digital payments. The outbreak of Covid-19 has negatively impacted the usage of physical money; contrary to this study [67] found that Perceived risk (P.R.) Covid 19 contributed to the use of digital payments. Using cash, and contact-based payment methods could be one of the causes for spread of COVID-19, also World Health organisation (WHO) encouraged consumers to use contactless payment ways for regular financial transactions. Cantered on the existing literature and article, the framework proposed included PRC19 impacted intention to adopt fintech service applications like digital banking, online payments, and e-wallets for their financial transactions. Loyalty implies consumers intention to continue using a service or technology after a wow experience. User loyalty implies fintech users’ online services or using apps for financial transactions after a good experience, exhibited by continuous usage and positive WOM (word of mouth). The conventional notion of brand loyalty extends to the online loyalty to customers’ online behaviour [73]. Also stated as e-loyalty, it indicates to repeated usage behaviour and reuse intention of online services or apps in future, [74, 75]. The determinants of e-loyalty include service quality, [76, 77]; Trust in service, [32]. From the perspective of fintech adoption, the transparency in terms of security of data used for online services can enhance users’ loyalty about Fintech. Fintech experience influences the user’s Loyalty to the fintech services, [78]. Continuous usage of fintech services enables users to conclude the convenience and quality of the services. Hence this variable is included in the model.

Adoption of Fintech  83

4.5 Conclusion Based on the TAM, a research framework model is constructed to understand the user adoption intention pre and post Covid 19 behaviour. The chapter presents a more refined and comprehensive view of the determinants of behavioural intention. An attempt is made to augment an understanding of the topic by distinguishing the determinants influencing the adoption of Fintech and comprehending the conflicting conclusions concerning the impact of the determinants. The researcher believes that the new theoretical framework with a future research agenda adds insights to the existing literature in the present area of study. This chapter aims to bring an extensive research base to employ Fintech in different ways and answer the research questions set earlier. It has tried to identify the growing number of surveys demonstrating the fintech transformation considering the oddities, complexities, and possibilities. The potential researcher can adopt this model and test for future research and compare the usage of Fintech among developed and developing countries and the usage of Fintech among the Women, Millennials and Gen Y. While the authors recognize that many voids can be found in this review and proposition, it optimistically turns out as an exciting fodder. It gives insights to business community to tap the rural markets that accounts to only 22-28% of India population having access to internet and frame strategies to improve financial infrastructure with financial literacy. A comprehensive and efficient measurement will improve a better investigation of the adoption model of Fintech services. Heeding the above suggestions, the study believes in strengthening and transforming what exists to be a user’s status into empirical research and theorizing in management and business studies.

Acknowledgement This work has not received any funding.

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5 A Comprehensive Study of Cryptocurrencies as a Financial Asset: Major Topics and Market Trends Gioia Arnone1* and Ajantha Devi Vairamani2 Department of Managerial and Quantitative Studies, University of Naples Parthenope, Napoli, Italy 2 AP3 Solutions, Chennai, TN, India

1

Abstract

The article comprises a set of theoretical and methodological approaches to studying the concept of “cryptocurrencies as a financial asset and market trends.” and identifies some trends of development of the real sector in the project financing market. This paper provides a systematic review of the empirical literature based on the major topics that have been associated with the market for cryptocurrencies since their development as a financial asset. It also presents an overview of the advantages of current trends in the market. Each influences the perception of the role of cryptocurrencies as a credible investment asset class and legitimate value. We posit that cryptocurrencies may perform some useful functions and add economic value, but there are reasons to favor the regulation of the market. While this would go against the original libertarian rationale behind cryptocurrencies, it appears a necessary step to improve social welfare. Keywords:  Cryptocurrency, financial assets, market trends

5.1 Introduction Cryptocurrency forms of money have stood out from financial backers, controllers, and the media since Bitcoin was first proposed by Nakamoto (Nakamoto & Bitcoin, 2008). Digital forms of money are distributed electronic money frameworks that permit online installments to be sent directly, starting *Corresponding author: [email protected]; [email protected]; https://orcid.org/0000-0002-6787-7283 Ajantha Devi Vairamani; https://orcid.org/0000-0002-9455-4826 Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (91–104) © 2023 Scrivener Publishing LLC

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92  Fintech and Cryptocurrency with one party and then the next, without a financial foundation. This way, unlike most other monetary resources accessible, they have no relationship with any more significant position, have no actual portrayal, and are vastly detachable. Additionally, unlike conventional monetary resources, the worth of digital forms of money does not depend on any unmistakable resource, a nation’s economy or a firm, but rather depends on the security of a calculation that can follow all exchanges (Giudici et al., 2020). The development of digital forms of money can be connected to their low exchange costs, distributed framework, and legislative free plan. This has prompted a flood in exchanging volume, instability, and cost of digital currencies, with cryptographic forms of money routinely in the standard news (Bariviera & Merediz-Solà, 2021). Cryptocurrencies have experienced broad market acceptance and fast development despite their recent conception. Many hedge funds and asset managers have begun to include cryptocurrency-related assets in their portfolios and trading strategies (Jalal et al., 2021). The academic community has similarly spent considerable efforts in researching cryptocurrency trading. This paper seeks to provide a comprehensive survey of the research on cryptocurrency trading, by which we mean any study aimed at facilitating and building strategies to trade cryptocurrencies (Zeng et al., 2020). Bitcoin is the main decentralized advanced cash and stays the cryptographic money market’s chief. From October 2016 to October 2017, the market capitalization of Bitcoin expanded from $10.1 to $79.7 billion, while the cost bounced from $616 to $4800 (US dollars). This huge development introduced a valuable chance to acquire 680% of the profit from speculations each year, which some other resources can’t present. In December 2017, the cost for each Bitcoin came to $19,500. As the blockchain space develops, Bitcoin will encounter an expanded contest in the closest future. Today, more than 1,000 cryptographic forms of money, including new items, for example, Ethereum, Ripple, Litecoin, and Dash, have added to an absolute market capitalization of nearly $190 billion (Mikhaylov et al., 2021).

5.2 Literature Review Numerous researchers endeavor to address normal examination questions taken from a wide finance exploration custom, such as market proficiency, resource valuing air pockets, virus and decoupling theories, instability bunching, and the effect of information declarations and media consideration give some examples. Many investigations are directed equal, using

Cryptocurrencies as a Financial Asset and Market Trends  93 comparable datasets and comparative approaches, giving indistinguishable proof. In addition, because of the criticalness of these examination issues, many papers are distributed in short exploration notes, making it much more significant for monetary researchers to guarantee that their examination discoveries are particular. Along these lines, it is pivotal to survey the current papers in this examination field and distinguish a present edge of the scholarly nature of the investigations that consider the difficulties and potentially open doors encompassing cryptographic forms of money. Nakamoto (2008) designed Bitcoin. It facilitated electronic payments between individuals without going through a third party. Since its introduction, Bitcoin has been the subject of challenges and opportunities for policymakers, consumers, entrepreneurs, and economists. Bitcoin is considered different from any other asset in the financial market. It creates new possibilities for stakeholders concerning portfolio analysis, risk management, and consumer sentiment analysis. Thakkar & Chaudhari (2021) presented a normal air pocket model for Bitcoin and other digital forms of money that consolidates weighty tails and the likelihood of a total breakdown in resource costs, making this model a hypothetical refinement of the model by Cheah and Fry [2015]. Without any focal digital currency market guideline, the likelihood that the entire market can fall is higher for cryptographic forms of money than for different resources (Cheah & Fry, 2015; Thakkar & Chaudhari, 2021). The paper gives proof of an air pocket in Bitcoin and Ethereum, while there is no proof of an air pocket in Ripple. They dissected the value explosivity of the seven biggest digital forms of money by market capitalization utilizing day-to-day information. The outcomes show that all digital forms of money (Bitcoin, Ripple, Ethereum, Litecoin, Nem, Dash, and Stellar) experienced dangerous behavior. Besides, the review gives proof of multidirectional co-explosivity conduct, i.e., explosivity in one digital currency can prompt explosivity in other cryptographic forms of money. Simultaneously, this impact isn’t guaranteed to rely upon the size of every cryptographic money (Celeste et al., 2020). The global practice of project funding has usually been utilized to execute enormous scope and capital-escalated projects for a long time. Organizations incorporating progressively into the world financial space face the need to carry out the tasks comparable in their intricacy and scale to the activities completed by their rivals on the planet markets. To that end, project funding turns out to be possibly increasingly famous and important in the market. The actual chance of full use of undertaking support is fundamental for the advancement of organizations and, over the long haul,

94  Fintech and Cryptocurrency for our country’s monetary turn of events. Project funding as an apparatus for long-haul venture projects is planned to support long-haul interest in the genuine economy; however, because of the monetary approach sought after in Russia encounters a deficiency of obligation capital. Project funding development with its benefits will permit to take a critical quantum jump in Russia’s change to another level (Peters et al., 2015). The year 2017 was the most un-unstable year starting around 1964, with simply 6.8% acknowledged unpredictability for the S&P 500 Index. Move of market instability. Bitcoin, nonetheless, was north of twelve times more unpredictable during a similar period. Simultaneously, many powers drive day-to-day variances and disparities. There was a steadiness in stocks that originated from a particularly solid agreement in late 2016 about the year ahead, further reflected in the moderately low Cboe Volatility Index (VIX) introduced (DeVries, 2016). Such changes in the assumptions for corporate income have the most effect. For Bitcoin and other digital currencies, this isn’t true. There are no profit and agreement valuation structures for digital currencies aside from financial backers put on the item. The race to purchase digital forms of money pushes costs higher prompting a cost instability winding produced by the excited self-supporting force and theoretical way of behaving digital money financial backers saw between 2014 and late-2017 (Kristjanpoller et al., 2020). Finance investor consideration is additionally seen as a critical determinant of potential market mispricing, as examined in (Charfeddine et al., 2020) and (Sebastião et al., 2021). Utilizing the VECM strategy, Mai et al. [2015] observed that online activity impacts are generally determined by the people who utilize web-based entertainment on rare occasions, also called the quiet larger part. Further, messages on web discussions strongly affect Bitcoin returns more than tweets. Utilizing a critical information base spreading over 2010 through 2017, Urquhart (2018) observed that acknowledged unpredictability and the volume of Bitcoin exchanged, controlled for Bitcoin basics, are huge drivers of the following day’s consideration for Bitcoin (Urquhart, 2018). Balcilar et al. (2017) show that volume can’t assist with foreseeing the unpredictability of Bitcoin returns at any time of the contingent conveyance; however, it can anticipate returns aside from Bitcoin, bull, and bear market systems (Balcilar et al., 2017). The study aims to summarize some theoretical and methodological positions concerning the formation of the mechanism of project financing with the participation of finance and an analysis of the current state of the project financing market and some trends of its development.

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5.3 Methodology Systematic analysis approaches can provide a more comprehensive understanding of the knowledge in the field, and the findings can change future directions of the research in this discipline by uncovering gaps in the literature. For new research areas such as those based on cryptocurrencies, a systematic analysis can be the most powerful tool to inform academics, professionals, and policy-makers about the current state of knowledge, consensuses, and ambiguities in the emerging discipline. Cryptocurrency finance research immediately adopted the same pattern. However, apart from the standard financial problems mentioned above in cryptocurrencies, several unique and specific issues cannot be addressed directly using quantitative research design and data mining. For example, regulatory disorientation, cybercriminal, and environmental sustainability are a few. This paper provides recommendations on how cryptocurrency research can be diversified to provide more meaningful contributions to knowledge. This paper provides a systematic review of the empirical literature on the major topics that have attracted the attention of scholars. Our motivation to employ a systematic analysis in this study is threefold. First, this paper is motivated by the growing academic literature analyzing various issues associated with the rapid growth of cryptocurrency markets. Second, our study is motivated by a relative dearth of systematic literature reviews in finance. While systematic reviews have become very popular in medical science, psychology, neuroscience, economics, international business, and management, in finance, the preference was given to more narrative literature surveys. Thirdly, this review is motivated by the problem of paradigmatic unity in finance research. The majority of financial papers are conducted in broad traditions of positivist research. However, the important research questions for practitioners and policy-makers often rely on upon beyond this philosophical paradigm. The popularity of cryptocurrencies amongst users has attracted substantial media attention while becoming a popular topic in recent academic research. While new empirical evidence continues to emerge rapidly, there is a strong need to aggregate the existing knowledge in cryptocurrency research and identify the gaps in the existing literature. It is important to generate research findings useful for policy-makers, businesses, and society and can be disseminated and replicated by scholars outside the financial community. Cryptocurrencies: an asset on a blockchain that can be exchanged or transferred between network participants and hence used as a means of payment but offers no other benefits. Within

96  Fintech and Cryptocurrency cryptocurrencies, it is then possible to distinguish those whose quantity is fixed and price market-determined (floating cryptocurrencies) and those where a supporting arrangement, software or institutional, alters the supply to maintain a fixed price against other assets (stable coins, for example, Tether or the planned Facebook Libra).

5.4 Findings Cryptocurrencies are part of a larger class of financial assets known as “crypto-assets,” which have similar peer-to-peer digital value transfers without the use of third-party organizations for transaction certification. What makes cryptocurrencies different from other crypto-assets? This depends on their intended use, i.e., whether they are given just for transfer or to serve other purposes. One can continue the differences highlighted in current governmental reports within the general category of crypto-­assets, differentiating two additional sub-categories of crypto-assets on top of cryptocurrency (Pavlidis, 2020). • Cryptocurrencies are a type of asset on a blockchain that can be transferred or moved between network members and therefore used as a form of payment—but with no additional features. • Crypto securities are a type of blockchain asset that also has the potential for future payments, such as a portion of earnings. • Crypto utility assets are blockchain assets that may be exchanged for or used to access pre-defined services or operations. Within cryptocurrencies, it is feasible to differentiate between those whose source is rectified and the price is ascertained by the industry (floating cryptocurrencies) and those whose source is altered by a supplementary structure, such as software or financial, to sustain a defined price against other assets (fixed cryptocurrencies) (stable coins, for example, Tether or the planned Facebook Libra). Crypto securities and crypto utility assets are further distinguished because they are offered by a public sale (initial coin offerings or ICOs). ICOs have been a significant form of investment for technology-oriented start-up enterprises adopting blockchain-based business models. These crypto-asset classifications are important for global regulators because they must decide if a crypto-asset should be regulated as an e-money, security, or another type of financial instrument, particularly in light of

Cryptocurrencies as a Financial Asset and Market Trends  97 shareholder security issues in ICOs (Cumming et al., 2019; Huang, 2021). The leading 12 crypto-assets by market capitalization are Tether, a stable coin, and Bitfinex’s UNUS SED LEO, a utility coin; the remainder is floating cryptocurrencies.

5.5 Cryptocurrencies as a Major Financial Asset Since the birth of Bitcoin almost a decade ago, scholars, politicians, and policymakers have been watching the rise of cryptocurrencies. Cryptocurrency proponents say there is an indication to back up the asset’s steady development as a cashless means of payment that can transform the financial world as we know it. Cryptocurrencies, particularly Bitcoin, are among the first and most well-known uses of the widely recognized blockchain concept, garnering far more interest than other blockchain use cases. Bitcoin had a market capitalization of $205.4 billion US dollars in the third quarter of 2019 (Cap, 2019). While Bitcoin is the most popular, other cryptocurrencies such as Ethereum, Ripple, and Litecoin have all grown in popularity in 2019 (TradingView, 2019). Many people predict that blockchain and cryptocurrency technologies will shift from conventional funds transfer to digital ones underpinned by secure ledgers in the future. The number of decentralized node exchanges is likely to expand dramatically as a result of the underlying blockchain systems’ absorption into our daily lives (Alphand et al., 2018), putting more strain on the energy grid (De Vries, 2018), as well as infrastructure, peer-to-peer (P2P) networks, and storage volumes (Nakamoto, 2008). While the field of traditional infrastructure-like (cloud) communication analysis and prediction are well-studied, the influence of new networking paradigms, such as fog and edge (Busanelli et al., 2019; Mäkitalo et al., 2017), is projected to add a new degree of computational effort from both a telecommunications and computational standpoint. As a result, blockchains provide several distinct advantages over previous technologies. Redundant checking by several nodes ensures that a blockchain survives malfunctions and attacks. This resiliency goes much beyond replication because it occurs across the network without using a network hub or intermediary (Hyperledger, 2018). In general, the design of said distributed systems necessitates thorough management and operational analysis, but traditional methodologies may encounter several obstacles as the system’s diversity grows. Whereas the number of associated applications has been sharply rising (Lao et al., 2020), there is still a shortage of standardized methods and

98  Fintech and Cryptocurrency techniques for performance assessment and behaviour observation blockchains. Without any preliminary operational review, the construction of blockchain-based, extremely complex, and dynamic systems could have a significant detrimental influence during the deployment phase. Most existing evaluation methods are based on emulation techniques, which copy and replicate the complete network’s activity. It necessitates many computational, storage, and communication resources (Chen et al., 2017; Dinh et al., 2017). The deployment of true community-driven testnets receives less attention, although it necessitates major incentivization operations to entice people to participate (Ometov et al., 2020; Zhidanov et al., 2019). As a result, simulation creates a significant scaling issue for evaluating realworld deployments (Faria & Correia, 2019). Furthermore, such an evaluation necessitates significant technical work to adapt complex open-source solutions or production systems to test out rapidly growing systems. In this circumstance, modeling methodologies, such as analytical and simulation methods, might be used as an alternative to exchanging precision for assessment speed.

5.6 What is the Value of Cryptocurrencies? Current Market Trends On the one hand, cryptocurrencies should be able to simplify financial transactions by removing intermediaries, lowering transaction costs, making them accessible to anyone with an Internet connection, and providing greater privacy and security (Böhme et al., 2015; Richter et al., 2015). Conversely, the actual financial value conveyed in operations of freely floating cryptocurrencies like Bitcoin’s BTC and Ethereum’s Ether is unknown. Despite the Bitcoin blockchain’s thorough and unsubstantiated history of all prior operations, the knowledge only relates to notional quantities, i.e., the number of bitcoin units exchanged. Nevertheless, checking the exchange rates of cryptocurrencies versus existing fiat currencies might give you a sense of their market value. Cryptocurrency exchanges make this feasible, which keeps a near-constant price log for all actively traded coins. However, the resultant exchange rates are highly erratic; they show that cryptocurrencies have a non-zero value for individuals willing to buy them with fiat cash. What drives this worth without a sponsorship resource or a backer’s responsibility? Some backer it is the expense of “mining” (energy and time spent on computational endeavors expected to finish the development of another square in the chain and compensated by a

Cryptocurrencies as a Financial Asset and Market Trends  99 recently given digital money unit), but the expense borne by one individual from the organization doesn’t legitimize the worth of the new digital money unit for different individuals from the organization (Dwyer, 2015). Others guarantee their fairly estimated worth is driven by the theoretical air pocket; yet, stringently talking, the fizz has appeared in vertical cost deviations from the basic worth (Siegel, 2003); subsequently, the fizz clarification is just fractional and brings up additional issues about what drives financial backers’ convictions that feed their interest and, in this manner, support the fizz. If it is the ease and the speed of exchanges, new exchange innovations and asset move frameworks that enormously worked on in the new ten years (like TransferWise and comparative frameworks) ought to have cleared out a major piece of the digital money esteem, yet this doesn’t appear to be the situation. A potential response might lie in the highlights that recognize digital forms of money from different resources and instalment frameworks. Throughout most studies of cryptocurrencies, security, or indeed anonymity, is a key distinguishing trait. The worth of a cryptocurrency is essentially a measurement of how often users value transactional confidentiality. While confidentiality may be appealing for criminal activities (and some studies imply that cryptocurrencies are frequently used for these reasons), it’s impossible to rule out the possibility that users want more privacy, avoiding the “Big Brother” effect of conventional money transfers. Additional considerations, such as trend (users need to utilize the technology that everyone else is discussing ), hi-tech appeal (the want to use the most cutting-edge technology), or interest (the urge to try something different), may exist. Still, they appear to be more transient than the appeal of secrecy. The introduction of crypto exchanges, where anybody can register profiles and trade crypto-assets versus each other and fiat currencies, has been a crucial step in the ascent of cryptocurrencies and other crypto-assets. The Euro and the British Pound are presently the most popular trading currencies against cryptocurrencies, whereas the Chinese Renminbi (CNY) has lost a lot of ground since the People’s Bank of China tightened its regulations; roughly three-quarters of large exchanges offer trading assistance for two or more cryptocurrencies (Hileman & Rauchs, 2017). The featured crypto exchanges give substantial cryptocurrency price and trading statistics in the digital realm. The advent of these exchanges has spawned an extensive ‘ecosystem’ of services and players aimed at providing liquidity, profiting on price differences, and assisting both consumer and professional traders in their investments.

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5.7 Conclusion The need to escalate the support to cryptocurrency in the venture interaction follows from the fruitful improvement of the financial framework and economy overall. Business banks are keen on a stable monetary climate essential for their exercises from one perspective. The present paper directs a precise investigation of cryptocurrency finance research’s developing insights. We recognize that this examination field is youthful, and new observational and hypothetical proof keeps on arising consistently. Similarly, make sense of the principle restrictions and worries with digital currencies and the administrative issues facing legislatures and national banks. A restriction to our orderly investigation is the possible rejection of a few applicable examinations that will open up during the distribution interaction. We have incorporated the most applicable, peer-reviewed studies. Our principle discoveries exhibit that there are various holes in cryptocurrency-related writing. Even though there are numerous likely areas of interest regarding digital forms of money, we recognize ten significant holes in the writing, which, ideally, different specialists can use to add their insight around here. While digital currencies keep creating both an item and an exchanged market, we should direct our assumptions for their possible worth and advantages to society while being wary and considering the intrinsic perils they could produce inside our general public. Then again, supportable finance improvement relies generally upon the level of unwavering quality of the financial framework and its successful working. At a similar time, the cooperation of credit organizations in the speculation of various areas of the economy happens just under good circumstances because the interests of the singular bank as a business foundation are centered around benefit amplification at an acceptable level of hazards. Because of the restricted admittance of the abroad business sectors under states of high vulnerability, the expansion in interests in the public economy goes down. Along these lines, the significance of drafting monetary instruments to make a proficient system for project funding, including credit banks, is clear. Hence considering the need to foster the creation area and forthcoming changes in the speculation strategy of Russia, we can expect with certainty that undertaking funding as a sort of financial assistance will be a viable device for commitment to the cutting edge economy.

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References Alphand, O., Amoretti, M., Claeys, T., Dall’Asta, S., Duda, A., Ferrari, G., Rousseau, F., Tourancheau, B., Veltri, L., & Zanichelli, F. (2018). IoTChain: A blockchain security architecture for the Internet of Things. 2018 IEEE Wireless Communications and Networking Conference (WCNC), 1–6. Balcilar, M., Bouri, E., Gupta, R., & Roubaud, D. (2017). Can volume predict Bitcoin returns and volatility? A quantiles-based approach. Economic Modelling, 64, 74–81. Bariviera, A. F., & Merediz-Solà, I. (2021). Where do we stand in cryptocurrencies economic research? A survey based on hybrid analysis. Journal of Economic Surveys, 35(2), 377–407. Böhme, R., Christin, N., Edelman, B., & Moore, T. (2015). Bitcoin: Economics, technology, and governance. Journal of Economic Perspectives, 29(2), 213–238. Busanelli, S., Cirani, S., Melegari, L., Picone, M., Rosa, M., & Veltri, L. (2019). A sidecar object for the optimized communication between edge and cloud in internet of things applications. Future Internet, 11(7), 145. Cap, B. M. (2019). Market Capitalization (USD) - Blockchain Explorer. Celeste, V., Corbet, S., & Gurdgiev, C. (2020). Fractal dynamics and wavelet analysis: Deep volatility and return properties of Bitcoin, Ethereum and Ripple. The Quarterly Review of Economics and Finance, 76, 310–324. Charfeddine, L., Benlagha, N., & Maouchi, Y. (2020). Investigating the dynamic relationship between cryptocurrencies and conventional assets: Implications for financial investors. Economic Modelling, 85, 198–217. Cheah, E.-T., & Fry, J. (2015). Speculative bubbles in Bitcoin markets? An empirical investigation into the fundamental value of Bitcoin. Economics Letters, 130, 32–36. Chen, C., Qi, Z., Liu, Y., & Lei, K. (2017). Using virtualization for blockchain testing. International Conference on Smart Computing and Communication, 289–299. Cumming, D. J., Johan, S., & Pant, A. (2019). Regulation of the crypto-economy: Managing risks, challenges, and regulatory uncertainty. Journal of Risk and Financial Management, 12(3), 126. De Vries, A. (2018). Bitcoin’s growing energy problem. Joule, 2(5), 801–805. DeVries, P. D. (2016). An analysis of cryptocurrency, bitcoin, and the future. International Journal of Business Management and Commerce, 1(2), 1–9. Dinh, T. T. A., Wang, J., Chen, G., Liu, R., Ooi, B. C., & Tan, K.-L. (2017). Blockbench: A framework for analyzing private blockchains. Proceedings of the 2017 ACM International Conference on Management of Data, 1085–1100. Dwyer, G. P. (2015). The economics of Bitcoin and similar private digital currencies. Journal of Financial Stability, 17, 81–91. Faria, C., & Correia, M. (2019). BlockSim: blockchain simulator. 2019 IEEE International Conference on Blockchain (Blockchain), 439–446.

102  Fintech and Cryptocurrency Giudici, G., Milne, A., & Vinogradov, D. (2020). Cryptocurrencies: market analysis and perspectives. Journal of Industrial and Business Economics, 47(1), 1–18. Hileman, G., & Rauchs, M. (2017). Global cryptocurrency benchmarking study. Cambridge Centre for Alternative Finance, 33, 33–113. Huang, S. S. (2021). Crypto assets regulation in the UK: an assessment of the regulatory effectiveness and consistency. Journal of Financial Regulation and Compliance. Hyperledger. (2018). Hyperledger Blockchain Performance Metrics. Jalal, R. N.-U.-D., Alon, I., & Paltrinieri, A. (2021). A bibliometric review of cryptocurrencies as a financial asset. Technology Analysis & Strategic Management, 1–16. Kristjanpoller, W., Bouri, E., & Takaishi, T. (2020). Cryptocurrencies and equity funds: Evidence from an asymmetric multifractal analysis. Physica A: Statistical Mechanics and Its Applications, 545, 123711. Lao, L., Li, Z., Hou, S., Xiao, B., Guo, S., & Yang, Y. (2020). A survey of IoT applications in blockchain systems: Architecture, consensus, and traffic modeling. ACM Computing Surveys (CSUR), 53(1), 1–32. Mäkitalo, N., Ometov, A., Kannisto, J., Andreev, S., Koucheryavy, Y., & Mikkonen, T. (2017). Safe, secure executions at the network edge: coordinating cloud, edge, and fog computing. IEEE Software, 35(1), 30–37. Mikhaylov, A., Danish, M. S. S., & Senjyu, T. (2021). A New Stage in the Evolution of Cryptocurrency Markets: Analysis by Hurst Method. In Strategic outlook in business and finance innovation: Multidimensional policies for emerging economies. Emerald Publishing Limited. Nakamoto, S. (2008). Bitcoin: A peer-to-peer electronic cash system. Decentralized Business Review, 21260. Nakamoto, S., & Bitcoin, A. (2008). A peer-to-peer electronic cash system. Bitcoin.–URL: Https://Bitcoin. Org/Bitcoin. Pdf, 4. Ometov, A., Bardinova, Y., Afanasyeva, A., Masek, P., Zhidanov, K., Vanurin, S., Sayfullin, M., Shubina, V., Komarov, M., & Bezzateev, S. (2020). An overview on blockchain for smartphones: State-of-the-art, consensus, implementation, challenges and future trends. IEEE Access, 8, 103994–104015. Pavlidis, G. (2020). International regulation of virtual assets under FATF’s new standards. Journal of Investment Compliance. Peters, G., Panayi, E., & Chapelle, A. (2015). Trends in cryptocurrencies and blockchain technologies: A monetary theory and regulation perspective. Journal of Financial Perspectives, 3(3). Richter, C., Kraus, S., & Bouncken, R. B. (2015). Virtual currencies like Bitcoin as a paradigm shift in the field of transactions. International Business & Economics Research Journal (IBER), 14(4), 575–586. Sebastião, H. M. C. V., Cunha, P. J. O. R. Da, & Godinho, P. M. C. (2021). Cryptocurrencies and blockchain. Overview and future perspectives. International Journal of Economics and Business Research, 21(3), 305–342.

Cryptocurrencies as a Financial Asset and Market Trends  103 Siegel, J. J. (2003). What is an asset price bubble? An operational definition. European Financial Management, 9(1), 11–24. Thakkar, A., & Chaudhari, K. (2021). A comprehensive survey on portfolio optimization, stock price and trend prediction using particle swarm optimization. Archives of Computational Methods in Engineering, 28(4), 2133–2164. TradingView. (2019). Cryptocurrency Market. Urquhart, A. (2018). What causes the attention of Bitcoin? Economics Letters, 166, 40–44. Zeng, T., Yang, M., & Shen, Y. (2020). Fancy Bitcoin and conventional financial assets: Measuring market integration based on connectedness networks. Economic Modelling, 90, 209–220. Zhidanov, K., Bezzateev, S., Afanasyeva, A., Sayfullin, M., Vanurin, S., Bardinova, Y., & Ometov, A. (2019). Blockchain technology for smartphones and constrained IoT devices: A future perspective and implementation. 2019 IEEE 21st Conference on Business Informatics (CBI), 2, 20–27.

6 Customers’ Satisfaction and Continuance Intention to Adopt Fintech Services: Developing Countries’ Perspective Song Bee Lian1* and Liew Chee Yoong2 School of Marketing and Management, Asia Pacific University of Technology and Innovation, Kuala Lumpur, Malaysia 2 Faculty of Business and Management, UCSI University, Kuala Lumpur, Malaysia 1

Abstract

Finance Technology (Fintech) has emerged as the current trend in the financial world. Fintech services gain popularity from the increasing adoption by organizations and consumers. By applying empirical research, this chapter aims to explore the important factors influencing consumer satisfaction and continuance intention to adopt Fintech services. As previous studies on customers’ behavioral intention to adopt Fintech were mostly conducted in the context of developed countries, there is a paucity of research in the developing countries’ perspective. To address the research gap, this study focused on five selected developing countries, namely Malaysia, Indonesia, India, Nigeria and Philippines. Drawing on the extended Technology Acceptance Model (TAM) for the proposed research model, customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality and technology self-efficacy have positive effect on customer satisfaction and subsequently, continuance intention to adopt Fintech. The findings recommend that Fintech service providers to develop effective strategic frameworks to build consumer satisfaction and encourage their continuance intention to adopt Fintech. Keywords:  Finance Technology, customer satisfaction, perceived usefulness, continuance intention to adopt, hedonic motivation, perceived ease of use, developing countries

*Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (105–136) © 2023 Scrivener Publishing LLC

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6.1 Introduction Technological advancements and innovation have contributed to the increasing global adoption of Finance Technology (Fintech) services in the financial sector. Fintech services provide opportunities for organizations to innovate their business process through effective operational management, target cross-selling, personalize offers and improve service delivery to the customers in banking and finance industries [1, 2]. Customers utilized Fintech for purchases, investment and information search, which provide them benefits in the aspect of convenient, time and costs saving, and more options for purchases [3]. Fintech services can be categorized into traditional and emergent Fintech services [4]. Traditional Fintech services includes asset management and mobile backing leveraging on information technology to offer financial services, such as online banking [4]. Emergent Fintech services relates to innovative financial services supplemented by non-financial companies, examples include cryptocurrency, crowdfunding and mobile payment services [4]. Fintech has applied disruptive technologies such as Data Analytics and Blockchain improving existing business model and creating new service development in the financial services industry. Fintech involves the usage of mobile devices and other technology platforms to access bank account to perform transaction by going through various transaction notifications via SMS or APP [5]. Fintech has paved way for the usage of mobile application that created a seamless shopping experience to the customers. Through mobile service in Fintech, customers have more flexibility to make online purchases and payments. Retailers used various technology platforms to attract customers and promote usage of online channels for transaction. Over the years, Fintech has grown rapidly and has been adopted worldwide. Fintech services have become essential to most businesses, consumers and suppliers. The global Fintech market was valued at USD7301.78 in 2020, and it is projected to grow at a CAGR of 23.58% from 2021 to 2025 [6]. Among the factors that will contribute to the continuous growth of Fintech are increasing innovations, higher adoption of e-commerce platforms and usage of mobile payment services [6]. The global Fintech market has achieved growth with a total of US$100 billion in funding secured in 2021, compared to US$48 billion in a year before 2020 [7]. Global consumer Fintech adoption has grown significantly with 75% of consumers used Fintech for payment services and/or money transfer in 2019 [8]. The top five leading countries for Fintech adoption in 2019 consists of the emerging and developed countries, namely China, United States, Mexico, South Africa and United Kingdom [9].

Customers’ Satisfaction and Intention to Adopt Fintech  107 Nevertheless, Fintech is associated with various risks, such as operational, financial and legal risks, due to the technology influences and functionality [10]. Business transactions through online are subject to technical faults that have negatively affected customers’ trust and satisfaction [10, 11]. Furthermore, these risks have resulted in increased uncertainty and barrier to adopt Fintech by consumers [5]. Data security issues and lack of mobile and technology expertise are among the factors that can hamper the growth of Fintech market [6]. Furthermore, consumers’ complaints occurred in the system quality aspects such as server downtime or disruptions and error in barcode scans that have caused unable to perform transactions [12]. As the Fintech services are continuously evolving by leveraging on technology innovation, the challenges facing consumers are the requirement of adequate knowledge and skills, such as financial and digital literacy, to adopt Fintech [13]. The increasing competitiveness in Fintech services have contributed to greater differentiation between the service providers in improving service efficiency, managing operation costs and building risk control capabilities to attract consumers and encourage continuous adoption of Fintech [14]. Therefore, in the new era of competitive markets, the Fintech companies are facing various challenges to meet the changing consumers’ demand and satisfaction [15]. Previous studies have to examined Fintech adoption in various context. Past research focused on customer satisfaction level in the Fintech services [12, 16–18], and specifically on mobile Fintech [19], mobile payment [20], mobile banking [21], mobile banking applications [22] and internet financial services [23]. Literature covered continuance intention to adopt Fintech services in specific areas, such as mobile payment [24–26], smartphone banking [27] and mobile banking [28]. Past studies investigated the influence of consumer satisfaction on continuance intention to adopt in specific Fintech services, such as mobile payment [24], mobile banking [29, 30] and banks’ chatbot [31]. The determinants are used to examined its effect on customer satisfaction and intention to continue adoption in specific Fintech services, includes perceived usefulness [29], perceived ease of use [29], perceived privacy security [29], information quality [24, 31], system quality [24, 31], service quality [24, 31] and task technology fit [30]. However, there is limitation coverage on the predictor or antecedent factors on consumer satisfaction and continuance intention to adopt in the general context of Fintech. Yin and Lin [29] stressed that it is necessary for future research to explore on the important factors that influence customers’ willingness to adopt Fintech. Furthermore, lack of studies found on Fintech adoption in developing countries [32].

108  Fintech and Cryptocurrency Given the scarcity of empirical evidence and theoretical understanding on the antecedents influencing customer satisfaction and continuance intention to adopt Fintech services in the developing countries’ perspective, the present study will apply the Technology Acceptance Model (TAM) as theoretical foundation to explore the relationships. Hence, the present study will address the research gap in the literature through empirical research in examining the factors affecting consumer satisfaction and continuance intention to adopt Fintech services in the developing countries context. The main research objectives are: (a) to examine the effect of customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality and technology self-efficacy on customer satisfaction in the Fintech services, (b) to examine the effect of customer satisfaction on continuance intention to adopt the Fintech services. This chapter enhances to the existing literature through a proposed integrated research model to provide understanding on customer satisfaction and continuance intention to adopt Fintech services, extending the TAM. In the practical perspective, the findings would assist the Fintech companies to develop effective strategic frameworks to build consumers’ satisfaction and encourage their continuance intention to adopt Fintech.

6.2 Understanding the Fintech Phenomenon in Developing Countries Most developing countries are experiencing positive growth in the FinTech industry. The government in the developing countries has recognized the importance of FinTech towards the economic growth. Fintech industry in the developing countries has high potential investment capacity due to the development of mobile money [33].  Nevertheless, the different pace of economic development among the developing countries have affected the FinTech adoption level [34]. Developing countries with larger financial markets have more opportunities for Fintech innovation, adoption and growth compared to smaller financial market countries. Most businesses in the developing countries are dominated by the small and medium enterprises with constraints on financial and knowledge literacy to adopt Fintech [35]. India is the largest Fintech ecosystem in the world after United States and China, with Fintech market size worth USS31billion in 2021 [36]. The government in India has focused on policy and funding level to boost Fintech adoption and growth [37]. The FinTech adoption rate in India was

Customers’ Satisfaction and Intention to Adopt Fintech  109 87 percent as compared to the global adoption rate of 64 percent as of 2021 [38]. In Indonesia, the largest segment of Fintech services came from digital payments with a total transaction value of US$72.91billion in 2022 [39]. Indonesia has funds constraint to improve its financial infrastructure and accessibility, adding to the fact that the country has large unbanked population, recorded at 95 million population in 2017 [40, 41]. Malaysia has achieved a remarkable growth of Fintech with transaction values of RM460 million recorded for mobile banking in 2020, increased by 125% compared to 2019 [42]. Various initiatives have been undertaken by the Malaysian government to boost Fintech adoption by the businesses and consumers. In November 2017, Malaysia has formed the Digital Free Trade Zone (DFTZTM) with the assistance of Malaysia Digital Economy Corporation (MDEC) and Alibaba Group. Therefore, the government in developing countries have given greater emphasis on the development of Fintech to facilitate the creation of new business areas and development of industries.

6.3 Literature Review 6.3.1 Technology Acceptance Model (TAM) TAM conceptualizes that individuals decide to use a particular technology when performing a task [43]. TAM is significantly used in various studies for examining the usefulness of technology in different context of application [43]. TAM posited two main dimensions of perceived ease of use and perceived usefulness that influence user’s behavioral intention, attitudes, and actual usage of technology [43]. Perceived usefulness refers to the level that individual believes in utilization of a particular technology build better performance [43]. Perceived ease of use relates to the individual’s belief of information technology usage is effortless [43]. An individual will be more prone to adopt the technology when the technology is considered as useful and enhances their performance. TAM has been applied extensively in research to analyze the consumer attitudes and behavioral intention to adopt Fintech [29, 38]. In many studies, additional variables were tested as antecedents to consumer attitudes and behavioral intention to adoption of Fintech. Research suggests to explore customer innovativeness [44], hedonic motivation [45], system quality [46] and technology self-efficacy [15] as factors that influence acceptance of technology. In this study, we proposed extension of the TAM model by adding variables related to customer innovativeness, hedonic

110  Fintech and Cryptocurrency motivation, system quality and technology self-efficacy. These additional variables are included in the extended TAM model to provide more holistic understanding and better insights on the important antecedent factors that influence customer satisfaction and continuance intention to adopt Fintech. The addition of the variables can bridge the existing theoretical gap that occurred in the TAM model. Drawing on TAM, the conceptual framework is developed to explain the critical factors influencing customer satisfaction and continuance intention to adopt Fintech in the developing countries.

6.3.2 Customer Satisfaction Customer satisfaction relates to the customer overall assessment between the real experience they encountered from the performance of a product or service and customer’s expectations [47]. In the service industry, customer satisfaction relates to the desired result of a service experience [48]. Customer satisfaction is an important driver to the development of customer intention to reuse services [49]. In Fintech services, customer satisfaction is applied as the key strategic tool to attract new customers, and sustain and develop existing customer relationships [50]. Fintech services that are innovative managed to create customer satisfaction due to customers’ perceived usefulness and reliability of its services [17]. In a study conducted on mobile Fintech services, Zhang and Kim [19] concluded that the characteristics of security, benefits, flexibility and convenience, are the factors that contributed to customer satisfaction and use intentions. Therefore, it is crucial for Fintech services providers to prioritize on building and maintaining customers’ satisfaction through the innovativeness, uniqueness and benefits of their services to achieve competitive advantages in the industry. Millennial consumers have strong buying interest on products or services when they are satisfied in using the Fintech services [51].

6.3.3 Customer Innovativeness Customer innovativeness is conceptualized as “the degree to which an individual is relatively earlier in adopting an innovation than other members of his system” [52]. Highly innovative consumers, with creativeness and uniqueness characteristics, are the change agent for new information technology adoption [53]. In the evolving Fintech services that are associated with various risks effect, customer innovativeness is crucial to remove their anxiety feeling on the new technology and encourage their adoption [54].

Customers’ Satisfaction and Intention to Adopt Fintech  111 As Fintech is a dynamic and innovative field, the Fintech adoption is highly associated with technology-driven consumers who prefer to experience new services [55]. In a study conduct on Fintech services in Brazil, Mainardes et al. [17] reported that customer innovativeness positively influence customer satisfaction, because customers who are open to innovation tend to perceived the services as reliable and useful. Therefore, Fintech innovation played an important role in stimulating and enhancing consumer innovation to adopt the services [56]. Consumer innovativeness affected by financial literacy and government support, was found as a significant predictor affect the adoption of Fintech in Indonesia [38].

6.3.4 Hedonic Motivation Hedonic motivation involves the pleasure, amusement or cheerfulness obtained from the use of a technology [57]. Fintech services using mobile platform with the elements of entertainment, contributed to more willingness for consumers to use the technology. Hedonic motivation is an intrinsic value that influence consumers to achieve internal satisfaction. Hedonically motivated individuals are more willing to spend time engaging in activities that they would rather continue [58]. Bhatt and Nagar [20] posited that hedonic motivation dimensions for consumer’s mobile banking services experiences were enjoyment, fun, pleasure and entertaining. The pleasure and satisfaction obtained by consumers from the usage of mobile payment platforms are important elements that determined their Fintech adoption [59]. Empirical study conducted on customers of mobile banking in Jordan confirmed that hedonic motivation positively influenced behavioral intention and adoption of mobile banking [60]. Drawing on TAM, Salimon et al. [45] found that hedonic motivation significantly influenced consumers’ smartphone banking usage in Nigeria. Young consumers feeling comfortable and satisfied in using existing mobile banking services will not have the intention to switch to other payment platforms [61]. For example, attractive and aesthetics design in Fintech contributed to consumers’ pleasure and enjoyment in experiencing the services.

6.3.5 Perceived Usefulness Perceived usefulness relates to the level that individual believes that using a technology build better performance [43, 62]. Fintech services created more efficiency for information searching, online purchase and transactions that have strengthened customers’ perceived usefulness to adopt

112  Fintech and Cryptocurrency Fintech [63, 64]. Perceived usefulness is the most effective predictor to customers’ satisfaction due to benefits or values obtained from the usefulness of the Fintech system and services [23, 64]. In a study conducted on consumer behavioral intention to utilise mobile banking in Malaysia, Shanmugam et al. [62] concluded that positive perceived usefulness of Fintech was influenced by the perceptions of credibility and benefit. In Fintech services, perceived usefulness has positive influence on customer satisfaction [17]. Supporting this claim, Yin and Lin [29] found that consumers believed in the interactive efficiency involving human, information and system characteristics of the mobile banking applications. Information interaction functions should have effective searching and browsing of information. High-quality information systems with security features contributes to higher utilization rate and consumers’ satisfaction in using Fintech services [29, 66]. Perceived usefulness was influenced by perceived security, which created positive customer satisfaction in mobile Fintech payment services in Vietnam [26]. In an empirical research performed by Phuong et al. [25], they postulated that exist positive association between perceived usefulness and customer satisfaction in continuous intention to use an e-wallet. In contrast, perceived usefulness was identified to have no significant effect on young customers’ satisfaction in e-wallet payment system context, as they are more concerned on perceived ease of use instead [15].

6.3.6 Perceived Ease of Use Perceived ease of use is conceptualizes as the judgement of easy to learn and use to avoid the issue arising from the use of technology in financial transactions [67]. Perceived ease of use relates to the individual’s belief of information technology usage is effortless [43] and not complicated [68]. In Fintech services, perceived ease of use was identified significantly influence customer satisfaction [17]. Fintech platforms with user-friendly interfaces and clear instructions enhanced the ease of use [12]. With that, ease of use is an advantage that contributed to customer satisfaction in Fintech adoption [22]. Fintech services that have the characteristics of expediency of access increases the consumers’ adoption intention [65]. For example, digital payment used by customers for frequent purchases are referred to as ease of use and will increase customer satisfaction [21]. The problems associated with Fintech services, such as navigation problems and transaction issues, have caused difficulties in its usage and have negatively affected customer satisfaction [29]. As the extensiveness of Fintech services that linked to third-party platforms are important [69],

Customers’ Satisfaction and Intention to Adopt Fintech  113 but the lack of Fintech services’ ability to link with third parties for transactions or other features may negatively influence customers’ perception on ease of use and satisfaction. Hence, the service providers to prioritize on user-friendly and value features of Fintech to create consumer’s perceived ease of use [56].

6.3.7 System Quality The assessment for system quality involves usability, adaptability, reliability, availability and system response time [66]. Consumers’ positive experience on the system quality of Fintech leads to their positive attitudes and behaviors, such as satisfaction [70]. The quality of the system of mobile banking increased consumer satisfaction due to the effective system’s performance and trust in using the services [46]. Consumers obtained higher satisfaction when they experienced using better system performance, thus leads to continuous use intent [71]. Several studies reported that consumers are affected by the insecurity attitudes due to the unauthorized access to their personal information and financial data at the system with lack security protection [72]. The mobile phones usage for financial transactions connected or linked to the internet are exposed to the possibility of fraud [11]. The risks associated with Fintech services resulted from the financial, legal, security and operational issues shown that the Fintech systems are lacking in system quality result in the distrust and dissatisfaction of customers [73]. Therefore, lack of system quality in the Fintech services will negatively affect the customer satisfaction.

6.3.8 Technology Self-Efficacy Technology self-efficacy relates to consumers’ confidence in using the technology itself [74]. The dimension of technology self-efficacy has been extensively applied to explore consumers’ acceptance on technology [75]. Consumers need to have knowledge, skill and ability to use the particular mobile technology so that it can facilitate their easy usage and adoption [76]. In a study conducted in Bangladesh, Karim et al. [15] reported that technology self-efficacy significantly influenced customer satisfaction due to the reasons of customers have strong ability, knowledge and confident in using the e-wallet payment technology. Individual exhibits high level of technology self-efficacy, would have positive attitude and find it relatively less difficult in using new technology [77]. Women has lower self-efficacy in new technology which have

114  Fintech and Cryptocurrency negatively affected their attitudes and intention to adopt robo-advisors in Fintech services [78]. As Fintech is continuously evolving and innovating using new technologies, lacking of information technology knowledge and skills can be the barriers for consumers to adopt Fintech.

6.3.9 Continuance Intention to Adopt Continuance intention to adopt Fintech services refers to individual’s intention to continue using Fintech services [30]. Customers’ continuance intention to adopt technology are influenced by their experience of usage and expectations on the future values of continuously using the technology [71]. Several previous studies have confirmed that customer satisfaction significantly influenced their continuance intention to adopt Fintech. Susanto et al. [27] asserted that customers have positive satisfaction and continuance intention to adopt the smartphone banking services resulted from favourable perceived usefulness and trust. In the mobile banking applications usage perspective, Yin and Lin [29] asserted that user satisfaction exerts effect on users’ continuance intention due to positive perceptions on usefulness, security and ease of use. Empirical research conducted on mobile payment in Africa, Franque et al. [24] posited that customer satisfaction is a significant factor that effect the continuance intention to adopt mobile payment.

6.3.10 Hypothesis Development The review of literature from previous studies indicate that Fintech dimensions of customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality and technology self-efficacy have effect on customer satisfaction. Subsequently, customer satisfaction affects continuance intention to adopt Fintech. Referring to the above reviews, we formulated the hypotheses: H1:  Customer innovativeness positively affects customer satis­faction. H2: Hedonic motivation has a significant positive influence on customer satisfaction. H3: There is a significant positive effect of perceived usefulness on customer satisfaction. H4: Perceived ease of use positively affects customer satisfaction. H5: System quality positively affects customer satisfaction.

Customers’ Satisfaction and Intention to Adopt Fintech  115 H6: There is a significant positive effect of technology self-­efficacy on customer satisfaction. H7: Customer satisfaction positively affects continuance intention to adopt Fintech.

6.3.11 Conceptual Model Drawing upon TAM, the conceptual model is formed as shown in Figure 6.1. Customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality and technology self-efficacy are correlated to customer satisfaction. Subsequently, customer satisfaction is correlated to their continuance intention to adopt Fintech services.

6.4 Research Methodology 6.4.1 Sample and Data Collection The sample consisted users of Fintech in the developing countries and sample size of 422 was selected using convenience sampling method. Determination of sample size is based on 5 to 10 times the number of

Customer Innovativeness Hedonic Motivation Perceived Usefulness

Customer Satisfaction

Perceived Ease of Use System Quality Technology Self-Efficacy

Figure 6.1  Conceptual model.

Continuance Intention to Adopt

116  Fintech and Cryptocurrency measuring items [79]. The measurement model has 8 constructs with a total of 33 measuring items, which justified the minimum sample size of 330 was required. By adopting quantitative approach, the survey questionnaire was used for data collection. Researchers have personally approached the potential respondents, who are users of Fintech and have experienced Fintech services for the past 3 months, from five developing countries, namely Malaysia, Indonesia, India, Nigeria and Philippines. Sample was drawn equally from the chosen five developing countries. Data were collected between February 2022 to April 2022. Response rate was 91% with a total 422 responses.

6.4.2 Measures of the Constructs The 8 constructs of customer innovativeness, hedonic motivation, perceived usefulness, perceived ease of use, system quality, technology selfefficacy, customer satisfaction and continuance intention to adopt Fintech were measured by 33 items. Likert scale of 6-point from the range of 1 strongly disagree to 6 - strongly agree were applied. The usage of 6-point scales provides more precised responses for the measurement items by eliminating the neutral point. The demographic covers the gender, age, income level and location details of the respondents. In view that same source of measures used to gather the data, there is possibility of occurrence of common method variance (CMV) [80]. By running the Harman’s single factor test for CMV [81], we can conclude that common method bias has cleared with the result of the single factor only account for 33.394% variance, which is below the threshold of 50%.

6.4.3 Validity and Reliability Assessment We have conducted pilot study on 30 respondents to validate the survey questionnaires. The model was assessed through validity and reliability analysis. Table 6.1 present the constructs, measurement items, factor loading, Cronbach Alpha (CA), Average Variance Extracted (AVE) and Composite Reliability (CR) values. To evaluate the validity of the measures, Exploratory Factor Analysis (EFA) was performed to decide on items elimination for factor loading values of below 0.3. The results shown KMO value of 0.932. The factor loading results for the 33 items were between 0.598 and 0.902, which indicate the well construct validity and shall maintained for further analysis. The values for CA were above required limit of 0.7 [82], between 0.821 and 0.927. The AVE values were above cut-off

Customers’ Satisfaction and Intention to Adopt Fintech  117

Table 6.1  Construct and measurement items. Construct (Source)

Item

Statement

Factor loading

CA, AVE, CR

Customer Innovativeness [40]

CI1

When I hear about new Fintech service, I am usually interested to try it

0.756

CI2

I like to experience the new Fintech service

0.832

0.880 (CA) 0.649 (AVE) 0.881 (CR)

CI3

I am always open to use new Fintech service

0.845

CI4

I always initiate to try the new Fintech service compared to my peers

0.787

HM1

Fintech service using mobile is fun

0.666

HM2

Fintech service gives pleasurable experience

0.735

HM3

Fintech service is entertaining

0.802

HM4

Fintech service using mobile is enjoyable

0.749

HM5

Fintech service required little effort

0.598

PU1

Fintech service can meet my needs

0.688

PU2

Fintech service enable effective transaction

0.797

PU3

Fintech service provide convenient to manage my financial activities

0.786

PU4

Overall, Fintech service is useful for me

0.662

Hedonic Motivation [20]

Perceived Usefulness [85]

0.834 (CA) 0.509 (AVE) 0.837 (CR)

0.821 (CA) 0.541 (AVE) 0.842 (CR)

(Continued)

118  Fintech and Cryptocurrency

Table 6.1  Construct and measurement items. (Continued) Construct (Source)

Item

Statement

Factor loading

CA, AVE, CR

Perceived Ease of Use [40]

PE1

Fintech service is easy to use

0.768

PE2

The operation interface of Fintech is user-friendly

0.828

0.894 (CA) 0.681 (AVE) 0.895 (CR)

PE3

0.892

PE4

Fintech service can be easily used by using device (cellphone, APP, WIFI, etc) Fintech service is easily understood

SQ1

Fintech system is ease to use

0.754

SQ2

Fintech system is highly reliable

0.848

SQ3

Fintech system enable me to accomplish my financial transaction

0.897

SQ4

Fintech system can be accessible well

0.851

TE1

I am capable of using Fintech service

0.674

TE2

I have the skills required to use Fintech service

0.846

TE3

I know how to link the connections of Fintech service with other related platforms

0.838

TE4

I can easily go through the steps in using Fintech service

0.678

System Quality [73]

Technology SelfEfficacy [76, 77]

0.807 0.903 (CA) 0.704 (AVE) 0.905 (CR)

0.842 (CA) 0.583 (AVE) 0.847 (CR)

(Continued)

Customers’ Satisfaction and Intention to Adopt Fintech  119

.

Table 6.1  Construct and measurement items. (Continued) Construct (Source)

Item

Statement

Factor loading

CA, AVE, CR

Customer Satisfaction [86]

CS1

I have positive experience using Fintech service

0.843

CS2

I have obtained good values from Fintech service

0.902

0.927 (CA) 0.758 (AVE) 0.926 (CR)

CS3

Fintech services fulfilled my needs and requirements

0.873

CS4

Overall, I am very satisfied using Fintech service

0.864

CA1

I have intention to continue using Fintech service

0.783

CA2

I would prefer Fintech

0.794

CA3

I will use Fintech service in future

0.817

CA4

I would positively consider Fintech service as my preferred choice

0.790

Continuance Intention to Adopt [73]

0.873 (CA) 0.634 (AVE) 0.874 (CR)

120  Fintech and Cryptocurrency values of 0.6 [83] between 0.509 0.758, and CR values were between 0.837 and 0.926, above threshold limit of 0.5 [84].

6.5 Results 6.5.1 Demographic Profile of the Respondent From the total of 422 respondents, 45% are females and 55% are males. As for the age group, 8% respondents are 18-25 years, 22% respondents are 26-35 years, 28% respondents are 36-45 years, 22% respondents are 46-55 years and 20% belongs to age group 56 and above. The majority of respondents belong to the income category of RM 4,000 – RM 5,999 (40%), followed by RM 6,000 – RM 7,999 (30%), RM 2,000 – RM 3,999 (14%), above RM 8,000 (12%) and below RM 2,000 (4%). In frequency of using Fintech services, the majority of respondents 55% have experienced two to three times a month, 25% once a month and 20% above four times a month. As for their locations, the respondents are divided equally 20% at location Malaysia, Indonesia, India, Nigeria and Philippines respectively.

6.5.2 Structural Model Assessment Structural Equation Modeling (SEM) analysis was applied to analyze the data using SPSS AMOS version 26. The structural model indices confirmed that the structural model has achieved a good fit. The probability level of the structural model was significant at p=0.000, with degree of freedom value of 369. RMSEA value was 0.053, below the acceptance level of 0.08 [87]. The chi-square and ratio of x2/df values were 1032.289 and 2.182 respectively. The incremental fit values, IFI of 0.935, CFI of 0.935 and TLI of 0.928, were all above 0.900. The hypotheses results are presented in Table 6.2. Customer innovativeness (r = -0.032, p > 0.05) had no significant effect on customer satisfaction, was not supporting H1. The results concluded that customers were lacking in their characteristics of innovativeness to explore new Fintech services that can satisfy them. Hedonic motivation (r = 0.157, p > 0.05) shown no significant effect on customer satisfaction, was not supporting H2. Perceived usefulness (r = 0.282, p < 0.05) had a significant positive effect on customer satisfaction, supporting H3. This means that the respondents (customers) perceived Fintech services could fulfill their needs and requirements, and useful Fintech platforms. This finding was consistent

Customers’ Satisfaction and Intention to Adopt Fintech  121 Table 6.2  Hypothesis testing. Hypothesized relationships

Estimate

p Values

Result

H1 Customer Innovativeness → Customer Satisfaction

-0.032

0.726

Not Supported

H2 Hedonic Motivation → Customer Satisfaction

0.157

0.243

Not Supported

H3 Perceived Usefulness → Customer Satisfaction

0.282

0.011

Supported

H4 Perceived Ease of Use → Customer Satisfaction

0.415

***

Supported

H5 System Quality → Customer Satisfaction

0.299

***

Supported

H6 Technology Self-Efficacy → Customer Satisfaction

-0.017

0.906

Not Supported

H7 Customer Satisfaction → Continuance Intention to Adopt

0.510

***

Supported

Note: ***p < 0.001.

to the findings from previous studies conducted by Nguyen et al. [26] and Phuong et al. [25]. Perceived ease of use (r = 0.415, p < 0.001) shown a significant influence on customer satisfaction, supporting H4. Moreover, system quality (r = 0.299, p < 0.001) also achieved a significant positive influence on customer satisfaction, supporting H5. We can conclude that customers believe Fintech services have optimal level of system quality that contributed to their satisfaction to continue adoption. Therefore, respondents believe that Fintech has the required quality standard in its system. Technology self-efficacy (r = -0.017, p > 0.05) had no significant effect on customer satisfaction, was not supporting H6. Finally, customer satisfaction (r=0.510, p0, our model will begin to favor the white parameter, despite the fact that both categories are equally relevant in the dataset. To tackle this problem, we should use the One Hot Encoding approach [10]. Separate columns for black and white labels will be constructed using this method. As a result, anytime the color black is used, a 1 will be placed in the black column and a 0 in the white column, and vice versa. In our case, all the characters’ labels were one hot encoded. e) Image Data Generation The model was fit on the training data produced after image data generation. The image augmentation approach is an excellent method for increasing

Deep Neural Network in Security  287

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Label is 2

Label is 2

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Label is 6

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Figure 13.5  Performing segmentation and relabeling.

Label distribution in CAPTCHAS 500

Count

400 300 200 100 0

3

d

n

7

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y

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x 2 w Characters

p

f

Figure 13.6  Distribution of characters in CAPTCHA images.

b

g

m

e

c

4

288  Fintech and Cryptocurrency Table 13.1  Frequency of characters. Characters

Count

2

270

3

271

4

289

5

288

6

267

7

262

8

272

b

247

c

276

d

269

e

245

f

277

g

281

m

282

n

540

p

259

w

244

x

271

y

240

the size of any dataset [11]. From the original dataset, new transformed photos can be produced. The addition of these little changes to the original photographs has no effect on the target class but does provide a different perspective on catching the object in real life. This aids in integrating a level of variety in the dataset, allowing the ML model to generalize more effectively on previously unknown data. In addition, when trained on new, slightly changed photos, the model becomes more resilient. Some altered

Deep Neural Network in Security  289 0

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Figure 13.7  Augmented images.

images generated using this technique are shown in Figure 13.7. The preprocessing is shown from Figure 13.2 to Figure 13.7.

13.4 Results and Discussions There are different CAPTCHA images (3/4/5 letters) are available. In this work, experiments are performed on 5 letters. Synthetically data was generated and then trained with 1070 CAPTCHA images. Letters created 5*1070 = 5350 random images for training. The experimental work is performed on 80-20 ratio for testing and validation. The generated CAPTCHA images were then segmented into 5 characters. All images were successfully segmented. The hyperparameter specifications are depicted in Table 13.2.

13.4.1 CNN CNN based diagnosis unit filter bank is used for verification. For each class, CNN classified filtered misclassification samples independently. The resultant captcha category was detected or not based on performance compared to previous work, but it worked with limited data. The complexity of CNN architecture is being overcome with the enhanced Crossover Optimization (ICRMBO) algorithm [26]. CNN [6, 15] eliminates manual work via encoding methods. The Figure 13.2 shows the complete framework of the

290  Fintech and Cryptocurrency

Table 13.2  Hyperparameters specifications. Model name

Epochs

Optimizer

Loss function

Metrics

Activation function

Splitting ratio

Batch size

Image size

CNN

150

Adam

Categorical Cross Entropy

Accuracy

ReLU & Softmax

80:20

32

40 X 20

DenseNet

20

Adam

Categorical Cross Entropy

Accuracy

ReLU & Softmax

80:20

32

256 X 256

MobileNet

20

Adam

Categorical Cross Entropy

Accuracy

ReLU & Softmax

80:20

32

256 X 256

VGG16

20

Adam

Categorical Cross Entropy

Accuracy

ReLU & Softmax

80:20

32

256 X 256

Deep Neural Network in Security  291 proposed model being used. Another, most used activation function that is quite easy to compute and does not have the problem of saturation and does not cause the Vanishing Gradient Problem in CNN is the “ReLu”. The CNN training processing results are depicted in Table 13.3 and classification report is in Table 13.4. Figure 13.8 shows the CNN accuracy and CNN loss function [16].

Table 13.3  CNN training process. Epoch

Loss

Accuracy

Validation loss

Validation accuracy

1

2.9725

0.1405

3.3706

0.0533

2

1.9756

0.4052

4.4760

0.0654

3

1.5806

0.5502

3.3472

0.1206

4

1.2329

0.6607

1.5664

0.5897

5

1.0905

0.7030

0.7039

0.8355

6

0.9483

0.7445

0.6000

0.8393

7

0.8461

0.7727

0.5477

0.8607

8

0.8106

0.7778

0.5389

0.8514

9

0.7401

0.8047

0.4913

0.8766

10

0.7537

0.7947

0.4907

0.8757

11

0.6591

0.8318

0.4939

0.8729

12

0.6793

0.8306

0.4577

0.8897

13

0.6299

0.8348

0.4678

0.8897

14

0.6006

0.8329

0.4431

0.8888

15

0.5923

0.8379

0.4311

0.8907

16

0.5689

0.8408

0.4345

0.8972

17

0.5757

0.8390

0.4485

0.8888

18

0.5617

0.8464

0.4250

0.8935

19

0.5247

0.8627

0.4324

0.8916

20

0.5664

0.8503

0.4379

0.8953

292  Fintech and Cryptocurrency Table 13.4  CNN classification report. Character

Precision

Recall

F1-Score

Support

2

0.92

0.94

0.93

49

3

0.95

1.00

0.97

53

4

1.00

0.97

0.99

68

5

0.96

0.95

0.96

57

6

1.00

0.98

0.99

52

7

0.93

0.93

0.93

58

8

0.94

0.98

0.96

50

b

0.96

0.96

0.96

53

c

0.90

0.92

0.91

50

d

0.85

0.87

0.86

61

e

1.00

0.89

0.94

36

f

0.96

0.93

0.95

57

g

0.92

0.95

0.94

63

m

0.93

0.50

0.65

54

n

0.76

0.92

0.83

104

p

0.94

0.94

0.94

65

w

0.95

0.93

0.94

44

x

0.92

0.92

0.92

53

y

0.87

0.93

0.90

43

13.4.2 DenseNet Huang et al. discussed an efficient architecture, where input and output layers are connected with short connections. The main pros of this type of networks are good flow of gradients and information in all around networks [21, 42]. Further, performance is increased consistently, without any overfitting and degradation. So, these can be performed well with fewer parameters and less computation. The proposed model has been trained for 15 epochs with batch size = 32 and the Figure 13.9 shows the trained

Deep Neural Network in Security  293 Loss function wrt epochs train loss val loss

4 Losses

3 2 1 0

20

40

60

80 100 Epochs (a) Model accuracy wrt Epoch

120

140

Accuracy

0.8 0.6 0.4 0.2

train acc val acc

0

20

40

60

80 Epochs (b)

100

120

140

Figure 13.8  (a) CNN loss function curve. (b) CNN model accuracy curve. Loss function wrt epochs train loss val loss

12 Losses

10 8 6 4 2 0

0.0

2.5

5.0

7.5

10.0

12.5

15.0

17.5

15.0

17.5

Accuracy

Epochs (a) 0.9 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1

Model accuracy wrt Epoch train acc val acc

0.0

2.5

5.0

7.5

10.0 Epochs (b)

12.5

Figure 13.9  (a) DenseNet loss function curve. (b) DenseNet model accuracy curve.

model accuracy and trained loss for test dataset. The training accuracy comes out to be 80.71% and the loss of 68.89% The model gives good and comparable results as the MobileNet model. The DenseNet training processing results with accuracy and validation loss and validation accuracy are depicted epoch-wise in Table 13.5.

294  Fintech and Cryptocurrency Table 13.5  DenseNet training process. Epoch

Loss

Accuracy

Validation loss

Validation accuracy

1

2.4300

0.2691

12.3071

0.0938

2

1.4761

0.5612

2.1059

0.4356

3

1.0830

0.6914

2.0788

0.4650

4

0.8921

0.7497

1.4102

0.5890

5

0.8029

0.7777

0.7290

0.7907

6

0.6934

0.8127

2.4152

0.4545

7

0.6454

0.8247

1.7855

0.5606

8

0.6108

0.8367

4.4762

0.1894

9

0.5597

0.8402

1.9655

0.4915

10

0.5532

0.8465

0.7144

0.7926

11

0.4907

0.8625

1.2253

0.6392

12

0.5139

0.8569

0.9835

0.7292

13

0.4861

0.8597

0.8249

0.7500

14

0.4715

0.8667

1.6232

0.6193

15

0.4253

0.8783

12.7892

0.0729

16

0.4461

0.8726

3.1716

0.3314

17

0.4466

0.8724

0.5881

0.8400

18

0.4139

0.8766

1.1775

0.7528

19

0.4258

0.8752

1.1985

0.6856

20

0.4026

0.8797

0.7066

0.8030

It is used as an activation function in between the hidden layer and the choice of the activation function for the output layer depends upon the type of the prediction problem. Thus, to underrate the loss function and to make it correct and optimized predictions as possible changes need to be made in the weights and other parameters like the learning rate of the model.

Deep Neural Network in Security  295

13.4.3 MobileNet Figure 13.10 presented next shows the validation and training loss and accuracy vs 15 epochs for the various pre-trained models from where the proposed model gives the highest training accuracy and the highest validation accuracy for the MobileNet [5] as pre-trained model for feature extraction. Performance indicators like precision, accuracy, recall, and F1 score can be used to assess the model’s strength. The ratio of number of accurately predicted photos to the total number of predictions can be used to calculate the accuracy. The hyperparameter tuning of the proposed model with MobileNet as convolutional base is also done for various optimizers Adam, SGD, Adagrad, Adadelta and RMSprop and the results have been analysed. Fine-tuning of the pre-trained model MobileNet is accomplished in the second suggested model by unfreezing the top layers of the convolutional base and retraining the network with a low learning rate and SGD optimizer. The suggested model’s comprehensive framework is shown in Figure 13.7. The model’s accuracy can be increased by fine-tuning. Unfreezing the few top layers of the convolutional base and retraining the network with a modest learning rate are the main components of fine-tuning. Following the formation of the model, the number of layers to be trained on our dataset is determined. Despite our objective of preserving most of what the original MobileNet learned from ImageNet by freezing the weights in many layers, particularly the early ones, we still need to train Loss function wrt epochs train loss val loss

30

Losses

25 20 15 10 5 0 0.0

0.9

Accuracy

0.8

2.5

5.0

7.5

10.0

12.5

15.0

17.5

12.5

15.0

17.5

Epoch (a) Model accuracy wrt Epoch train acc val acc

0.7 0.6 0.5 0.4 0.3 0.2 0.1

0.0

2.5

5.0

7.5

10.0

Epoch (b)

Figure 13.10  (a) MobileNet loss function curve. (b). MobileNet model accuracy curve.

296  Fintech and Cryptocurrency Table 13.6  MobileNet training process. Epoch

Loss

Accuracy

Validation loss

Validation accuracy

1

2.9329

0.1671

5.4715

0.1259

2

1.8845

0.4320

1.8362

0.4555

3

1.2812

0.6202

1.3102

0.6108

4

1.0847

0.6928

1.1356

0.6553

5

0.8744

0.7603

1.1031

0.6828

6

0.8074

0.7798

0.7936

0.7652

7

0.7562

0.7934

1.1186

0.7273

8

0.6805

0.8132

1.0164

0.7358

9

0.6374

0.8226

0.7115

0.7784

10

0.6004

0.8378

0.9950

0.7509

11

0.5821

0.8374

0.5228

0.8617

12

0.5721

0.8444

0.6898

0.8087

13

0.5173

0.8578

1.7734

0.6496

14

0.5277

0.8501

5.1469

0.3485

15

0.5208

0.8501

0.8341

0.7576

16

0.4865

0.8562

0.8532

0.7822

17

0.4993

0.8583

0.4044

0.8892

18

0.4614

0.8700

31.8383

0.1553

19

0.5354

0.8444

0.6044

0.8400

20

0.4931

0.8571

0.5528

0.8352

certain layers since the model has to learn characteristics about this new data set. After some testing, it was discovered that training only the final 23 layers and freezing the rest of the layers can produce acceptable results. The Mobile Net training processing results with accuracy and validation loss and validation accuracy are depicted epoch-wise in Table 13.6.

Deep Neural Network in Security  297

13.4.4 VGG16 VGG16 is a 16-layer CNN model [14] developed by researchers from the University of Oxford. The model has been trained for 15 epochs with batch size = 32 and the Figure 13.11 shows the training accuracy vs the validation accuracy and training loss vs the validation loss respectively for the captcha dataset. The model gives a good training accuracy of 74.22%, however, the validation accuracy is quite less as compared to the training loss is around 99.46% but the model seems too overfit. The VGG16 training processing results with accuracy and validation loss and validation accuracy are depicted epoch-wise in Table 13.7. Figure 13.12 and 13.13 presents decoded captchas with validation accuracy and loss. Table 13.8 presents the best accuracy and loss of each model.

Losses

Loss function wrt epochs 1750 1500 1250 1000 750 500 250 0

train loss val loss

0.0

2.5

5.0

7.5

10.5 Epochs

12.5

15.0

17.5

15.0

17.5

(a)

Accuracy

Model accuracy wrt Epochs 0.8 0.7 0.6 0.5 0.4 0.3 0.2 0.1

train acc val acc

0.0

2.5

5.0

7.5

10.0 Epoch

12.5

(b)

Figure 13.11  (a) VGG16 loss function curve. (b) VGG16 accuracy function curve.

298  Fintech and Cryptocurrency Table 13.7  VGG16 training process. Epoch

Loss

Accuracy

Validation loss

Validation accuracy

1

2.9045

0.0957

40.2459

0.1013

2

2.5863

0.1922

1307.7281

0.0464

3

2.3476

0.2872

12.4215

0.0521

4

1.9877

0.4080

2.7994

0.2803

5

1.7697

0.4740

938.6497

0.1231

6

1.6186

0.5210

2.0259

0.3759

7

1.5068

0.5638

110.7636

0.2178

8

1.3909

0.6005

1705.3021

0.1515

9

1.3157

0.6212

4.1092

0.2273

10

1.2379

0.6559

2.0136

0.4621

11

1.1816

0.6750

2.2760

0.3523

12

1.0999

0.7032

2.5250

0.3930

13

1.0515

0.7043

1.6795

0.5900

14

0.9955

0.7300

46.7504

0.4688

15

0.9946

0.7199

1.9572

0.6761

16

0.9388

0.7427

1.3696

0.5975

17

0.9204

0.7469

0.8395

0.7585

18

0.8937

0.7596

2.1399

0.4697

19

0.8770

0.7622

1.0941

0.6610

20

0.8564

0.7685

1.0141

0.7206

Deep Neural Network in Security  299

2g783

2fxgd

88bgx

4yc85

Figure 13.12  Decoded CAPTCHAs.

Accuracy and Loss Accuracy 1.00

0.9177

Loss

0.9946

0.8382

0.8071

0.7422

0.6889

0.75

0.5624 0.50

0.3541

0.25 0.00

CNN

DenseNet

MobileNet Model

Figure 13.13  Accuracy and loss comparison.

VGG

300  Fintech and Cryptocurrency Table 13.8  Accuracy and loss comparison. Model name

Accuracy

Loss

CNN

0.9177

0.3541

DenseNet

0.8071

0.6889

MobileNet

0.8382

0.5624

VGG16

0.7422

0.9946

13.5 Conclusion In this study, CAPTCHA which is used in the cryptocurrency and other vital issues of security have been implemented using three different deep learning and transfer learning models. The outcome of the experimental results validate the best approach for recognition is CNN. The comparison between CNN and other models (DenseNet, MobileNet, and VGG16) has been performed with accuracy and loss measures. In the future, we can utilize the CAPTCHA in more secured way by using the upcoming technologies.

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14 Customer’s Perception of Voice Bot Assistance in the Banking Industry in Malaysia Manimekalai Jambulingam1*, Indhumathi Sinnasamy2 and Magiswary Dorasamy3 Taylors Business School, Subang Jaya, Selangor, Malaysia Asia Pacific University, Bukit Jalil, Kuala Lumpur, Malaysia 3 Multimedia University, Cyberjaya, Kuala Lumpur, Malaysia 1

2

Abstract

The purpose of the study is to investigate customers’ perceptions of implementing voice bot technology in the banking industry. The pandemic environment has led to limited face-to-face interaction with customers and reduced instances of visiting the banks. Some of the challenges that customers face is the unavailability of officers to service them and the long waiting time.  Banks should ensure to provide personalized 24/7 services to retain their customers. To meet these demands, many banks in Malaysia are now on the verge of introducing voice bots to engage their customers 24/7. The study has adopted a qualitative method. The study revealed that convenience, time-saving, and perceived enjoyment are factors that drive the adoption of voice bots in the banking industry. The study adds value to academic literature for future researchers and it provides practical recommendations to implement voice bots smoothly and efficiently in the banking industry. Keywords:  Artificial intelligence, voice bot, banking industry, trust, natural language processing, customer satisfaction, and perceived risk

14.1 Introduction The present generation’s preferences and expectations of services offered are driven by advanced Artificial Technologies that can provide convenience, time-saving and unique customer experiences. As such consumers *Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (303–324) © 2023 Scrivener Publishing LLC

303

304  Fintech and Cryptocurrency leave the stressful decision to an external source of computation [1]. From groceries to stock market trades, search for the best price and element contents are left to assistant bots such as Google Assistant, Amazon’s Alexa, and Siri from apple [2]. According to eMarketer, 35.6 million Americans depend on a voice digital assistant like Google Home or Amazon Echo at least once a month. According to market chatbot statistics, usage of AI voice bit will increase 3 times in the next 5 years [3]. In today’s t­ echnology-driven world, people are so busy with their daily routines, that they have very little time as well as knowledge to manage their finances. The lack of time as well as knowledge motivates them to look out for assistance to manage their finances quickly and efficiently on a daily basis. In 2017, American Express introduced Amazon’s Echo to assist customers to check their bank balances and allow them to make transactions using a voice bot. In United States, Bank of America (BofA), the largest banking institutions introduced Erica, an AI-driven virtual financial assistant in late 2018. Erica’s capabilities include assisting clients to make better financial decisions by analyzing their spending habits and financial behavioral pattern to provide them with personalized guidance and proactive insights. Thus, for banking industries to remain relevant and competitive, it is imperative to move to the next level of service by introducing artificial intelligence and interactive voice bot to assist with customer service.

14.2 Problem Statement Artificial intelligence changed the business world rapidly, with the banking industry not being left behind. Artificial intelligence conversational interfaces such as voice bots have been a trending topic in recent years. Siri and Google assistants are the most recognized voice bots and chatbots’ conversational interfaces. The recent prediction from EMarketer shows that conversational AI adoption is increasing tremendously. The statistics show that 64.2 percent of those aged between 25 to 34 utilized voice bots in 2021 and by 2022, 49.2 percent will use a voice assistant. It also predicted that by 2025, 48.2 percent of the US population will use conversation AI. The present generations are demanding 24/7, instant, and unique customer experiences in the banking industry. Being a digitally native generation, they seek seamless financial experiences catered to their lifestyle preferences and favor services that are quick to adopt new technologies that make their lives easier and simpler. To cater to these growing expectations of customers, in recent years banking industries have taken a big step toward developing and improving their customer service through artificial

Voice Bot Assistance in the Banking Industry  305 intelligence technologies. At the moment, the banking industry has been using chatbots and personal banking apps driven by artificial intelligence to assist customers. The apps allow customers to perform banking tasks on their smart mobile devices without any face-to-face interactions with banking staff. As voice bot usage is gaining traction in all service sectors, the banking industry is also at the forefront to leverage the use of voice bots to cater to customers’ daily banking activities. To move forward, most players in the industry start by introducing voice bots for common repetitive tasks and general queries, like direct debits, standing orders, account statements request, reminders on upcoming payments, PIN and password reset, transaction limits, and various payment issues. In Asian countries, there are many studies focused on AI presence in marketing research on customer environment and consumer decision-making process with very few studies focused on voice bots and their services in the service industry. This research aims to gain knowledge and findings on consumers’ perception to adopt voice bots in the banking service industry.

14.3 What is a Voice Bot? Voice bots are chatbots that are voice-enabled i.e. AI-based software that allows voice interactions with devices and services, alleviating users’ inconvenience from the endless frustrating web and phone navigations while offering a more seamless and faster two-way communication. Voice bots are a form of Conversational Banking. Conversation Banking is an intelligent way of interacting with non-human interfaces through voice, text, live chats, or visual engagement tools at various platforms to cater to banking needs. The main goal is to understand customer needs and offer the best possible solution in a personalized manner even before they ask for it. Most well-known voice assistants in the world are Samsung Bixby, Siri (Apple), Alexa (Amazon), and Google Assistant. In the banking space, we have Bank of America (Erica), Ally Bank (Ally Assist), and Kotak Mahindra Bank (KEYA), to name just a few. The underlying technology for conversational bots initially started with a simple predefined conversation whereby customers or users are given a selection of questions with the bot responding to these queries and information requests based on predefined answers. With the advancement of technology and the use of artificial intelligence (AI) and natural language processing (NLP), bots are able to act much more flexibly and at times to even formulate answers on their own and offer responses in an almost human-like manner. It converts human voice to text using the Speech to

306  Fintech and Cryptocurrency Text (STT) engine. The AI technology then helps to identify key markers or otherwise called intents in the speech and provides a suitable response. The Text to Speech (TTS) engine then converts the response (text) to audio or voice to conclude the interaction [4]. The continued use of the bots optimizes the NLP function, thereby enabling the bot to operate more and more effectively. Figure 14.1 shows how NLP which enables bots to convert users’ speech into structured data to be understood by a machine comprise of Natural Language Understanding (NLU) and Natural Language Generation (NLG). NLU focuses on intent recognition, basically on comprehending the intention and meaning of human speech. This is done by recognizing patterns in unstructured speech input to extract information. For example: “I would like to apply for a car loan in the Kuala Lumpur main branch”. The bot must understand that the customer wants to apply for a car loan and not a housing loan. In addition, the preferred branch must be “Kuala Lumpur” and not any other branch. After the intent is detected, it will move on to the processing step which can be in various forms and would include completion of other information such as “car price”, “loan amount”, “tenure”. Thereafter, the system will communicate with other systems to search for eligibility of the loan. Based on these, there may be a necessity to generate responses, request for further information or communicate outcomes. Figure 14.2 shows the components of the voice bot. NLG is the domain that generates responses whereby it converts the machine-produced structured data into a human readable text that a user will understand. This involves the structuring of responses in a narrative manner, applying grammar rules and spell checks, and inputting the responses in a language template to ensure a natural conversational response.

Natural Language Processing (NLP) Processs natural language*

Natural Language Understanding (NLU) Understands and interpret natural language

Natural Language Generation (NLG) Generate natural language*

Figure 14.1  Voice bot Architecture. *Natural language refers to the way humans communicate with each other, which is complex, with an infinite number of phrasing possibilities. As voice bots evolve from defined to free communication, natural language processing makes all the difference.

Voice Bot Assistance in the Banking Industry  307 User

Integration to 3rd party system

Conversational Platform

Speech Text: Converts TextSpeech: Converts

Intent text/entity: Recognize the intent from the message and extracts the entities contained Response generation: Generate feedback message for the user according to the interaction

Intent processing: Selects the intent to be executed Request additional information Communicates with third-party systems Deals with exceptions

Integration/ Back-end: utilize applicatin programming interfaces (APIs) to integrate with other system

CRM

Database

Other Systems

Figure 14.2  Components of a voice bot.

The connection of voice bots to the third-party systems can be designed very flexibly via application programming interfaces (APIs). By connecting third-party systems, voice bots can fetch data from other applications, both inside and outside the organization in a fully automated manner, thus generating real added value.

14.3.1 Characteristics of a Voice Bot What is a well-designed voice bot? Voice bots are aimed at bridging the gaps in customer services at various contact points. The changing customer behavior which focuses on an instant, seamless and unique customer experience makes traditional banking less attractive, inefficient, cumbersome, and time-exhausting. Voice bots can handle these evolving customers’ expectations to become the first choice of support for many. In that context, let us explore the characteristic that makes a voice bot well designed. • 24 hours: Available around the clock for conversation with customers, even outside office hours and public holidays • Instant: Instantly responds to customer’s query without any delay or requiring them to wait in a queue • Improved sales performance: Able to remember customer preferences, and history, learns from customer responses, propose services and products and effectively cross-sell and up-sell • Omni channel: Available across different channels and provides consistent experience irrespective of the channel of communication or touchpoint

308  Fintech and Cryptocurrency • Enhanced customer experience: Provides inputs, follow up on queries, and improvises thus enhancing customer experience • Improved efficiency: Improves efficiency, reduces Turn Around Time, able to perform routine tasks quickly, allows employees to focus on more complex tasks by completing user interactions successfully with minimal human intervention. • Multi-language capability: Able to interpret commonly conversed languages • Simple interface: Eases communication with simple and easy-to-understand interfaces

14.3.2 Why are Voice Bots Becoming Popular? Changing consumer behavior, essentially all boils down to customer experience With the spread of conversational trends across most industries, voice bots are key to the banking sector’s digital journey to stay ahead of the curve and gain a competitive edge in delivering the next generation of customer service & engagement. The key factors influencing this increase in trend are: • The shift of customer behavior and preferences towards digital channels Customers are no longer interested to walk into a bank to do their banking. Availability of branches is no longer a key choice for customers. With accessibility for mobile devices, customers are switching to the internet and mobile apps for any sort of transaction. They want to complete all their task and needs in a click at their own comfort space without needing to allocate time, beat traffic, and walk into a branch. • Increase in expectations in service level, speed, and unique customer experience The standard of service and customer experience offered by technology, e-commerce, and fintech companies have lifted customers’ expectations and customers now seek the same hyper-personalized, unique and convenient service they get from Amazon, Netflix, Ali Pay, etc. • The younger generation gets accustomed to voice interfaces For Millennials and Gen-Z, the first fully digital generation, banking is an experience. They seek seamless financial

Voice Bot Assistance in the Banking Industry  309 experiences catered to their lifestyle preferences. Being a digitally native generation, they expect more from technology and are quick to adopt new technologies that make their lives easier. To entice and retain them as customers, banks have to constantly innovate with new digital technologies to provide tip top and unique customer experience. Putting their feet in early will allow banks to secure this market share and retain a competitive edge. • The accelerated digitalization of retail banks contributed to the Covid-19 pandemic. According to BCG experts in the study “Global Retail Banking 2021: The Front-to-Back Digital Retail Bank”, the pandemic has accelerated the digitalization of retail banks by 3-4 years, stimulating an active transition of customers from traditional banking channels to digital ones. Online banking grew by 23% and mobile banking by 30% respectively. BCG experts predicted that the usage of mobile banking trend will continue to grow by 19 percent and the number of calls from the customer to the banks will decrease by 26 percent by the end of the pandemic.

14.3.3 Benefits of a Voice Bot from the Bank’s Perspective • Reduce Cost: A properly implemented voice bot can significantly lower costs, and increase productivity and efficiency. Bots enable consistent quality of services being offered regardless of the circumstances. They help to reduce costs by servicing more customers without the need to increase their overheads. Virtual customer assistants can help curtail inbound queries by anything up to 40%, and often deliver first call resolution (FCR) rates far in excess of live agents [5]. A single bot can communicate with many different customers at the same time while providing a personalized response to them thus significantly reducing cost while delivering satisfactory customer experiences powered by greater analytical capabilities. • Increase Revenue: As the voice bot can communicate with many customers concurrently, this increases the chances of the services being translated into sales thus driving revenue. The real-time, omnichannel, smart interaction voice bot which offers a seamless and personalized customer

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experience, will enhance customer satisfaction and increase the chances of customers coming back for more services which leads to higher customer retention and ultimately a higher bottom line. Improved employee productivity: Voice bot allows the automation of a large fraction of calls, emails, SMS, social media messages, and other communication channels which would require human intervention otherwise. This enables employees to focus on more complex and higher skilled tasks and roles while the voice bot provides support by handling and speeding up tedious, repetitive, and mundane tasks/requests which can be time-consuming. By working hand in hand, voice bots and humans can provide a better and higher quality customer user experience. Expand to new channels: Voice bot can generate leads, qualify leads, schedule meetings, promote new products, provide personalized advice and support and increase engagement and digital sales. Essentially, the voice bot becomes another channel (in addition to traditional channels) for sales conversions and engagement of customers without the need to deploy new resources which would require additional cost, training, and management, making sales and marketing activities a lot easier and efficient. Reduce Error: It is inevitable for humans to make mistakes. There are instances where customers or employees accidentally provide inaccurate information or allow their emotions to cloud their logic and decision-making. Voice bots whilst not perfect, assist to lower the possibilities of mistakes and errors via human interactions. They offer consistent service and are far more dependable for retrieving policies, data, answers to FAQs, and more. Additionally, there are audit logs in place for regulatory purposes or to investigate customer complaints. The need for Data & Personalization: Banks already have lots of customer data. However, these data are not capitalized or organized in a way it can be used for customer attraction, acquisition, and retention, and sometimes these data are just data without any insights. So basically, they have data, but just maybe not the ‘right data’ which will help them tap into to offer better and innovative products and solutions

Voice Bot Assistance in the Banking Industry  311 to customers. Voice bots collect data that can be stored and accessed by many parties and systems. Data that is collected from human interactions may not be complete or may only be accessed and found useful by the parties who acquired the data. Banks that understand the importance of personalization in this current dynamic technological era where their main customers are millennials and Gen-Z will understand the need for data. An effective personalization would need (i) gathering data and gaining insights into customer behavior via these collected data to provide the personalization and (ii) making available a platform to have the personalized conversation. Voice bots play a crucial role in banks’ data collection and their personalization strategy.

14.3.4 Benefits of a Voice Bot from the Customer’s Perspective • Available 24/7: Voice bots never sleep. They are available 24/7, 365 days even on holidays, a feature the current digital savvy’s ‘always connected’ customers expect. It is at their convenience over different channels, and it is available immediately without long wait times. Banks with voice bots have a competitive edge as an effective and efficient voice bot can provide high-quality 24/7 support and will likely attract and retain their customers. • Enhanced Customer Experience: Customers these days look for speed, ease, and convenience rather than price. Voice bots simplify the process of users finding the information that they require. Customers just need to ask for the information and the voice bot can help them refine their searches through their responses and the ongoing conversations. After experiencing favorable exposure to various virtual assistants on their digital devices, users are seeking the same convenience and comfort in their banking services. As customers are happier, the banks get highly satisfied customers who keep coming back. • Increase Loyalty: When an organization delivers a quick, seamless, and frictionless experience that customers demand, it strengthens the connections to the organization and customers will repay with loyalty. They are also more likely to make recommendations to families and friends. Loyal customers

312  Fintech and Cryptocurrency help an organization grow and increase its profit. The profit of the business increased from 25% to 95% by increasing 5% of customer retention and the same effect on profit as decreasing operating costs by 10% [6]. The payoff of implementing an efficient voice bot that is responsive and conversational can be greatly significant. • Consistent answers: How often have one ended up talking to many different customer service agents to solve one issue or to get information on one single product? This is a normal scenario in any contact center or even branch. This results in the customers having to repeat themselves multiple times and receiving discrepancies and inconsistencies in answers and sometimes even needing to deal with impatient and annoyed agents. This may be due to the different levels of experience of the employees, the employees being new in their job, or the employee simply having a tough day at work. Voice bots meanwhile function on the pre-­determined framework and retrieve their responses from a single source of library. This mostly eliminates the inconsistencies in the responses provided. Moreover, they are not influenced by emotions and can consistently always provide the same level of services.

14.3.5 Opportunities for Voice Bots in Banking A fully integrated, scalable, and trainable chatbot solution will allow banks to automate key customer interactions across various functions, channels, and request types: • Customer Service: Simple FAQs to reduce call centers’ traffic. Voice bot can assist customers with a variety of simple requests conversationally and securely ranging from reviewing an account, reporting lost cards or making payments, resetting PIN, locating a branch/ATM, etc. This enables a 24-hour service to customers with immediate response whilst enabling greater efficiency at Customer Contact Centres by allowing employees to focus on more complex tasks. • Customer Acquisition: Voice bots can be used to boost cross-selling/upselling among existing customers, offer personalized products and services based on historical

Voice Bot Assistance in the Banking Industry  313 transactions and user profiles as well as help potential customers in right-sizing products and services based on their needs during the onboarding process. This can increase lead generation, accelerate customer acquisition and assist to reduce application drop-offs. • Provide Financial management: An effective voice bot will have access to all customers’ information and profile. It can learn from customers’ interactions and transactional behavior, provide credit scores, set and manage budgets, and give them a deeper awareness of their banking activities. With all this information, voice bots can guide and advise customers on their cash management, enabling them to make smarter decisions and boost their financial health. They can play the role of a financial advisor by offering personalized financial advice which is usually reserved for the wealthier customers. This can be very useful for people who don’t have easy access to financial advice services due to their budget or location. As customers cultivate better financial habits, there will be opportunities to offer new innovative products to them even before they know they would need it. • Wealth Management: As stated earlier, voice bots incessantly analyze large amount of data. This generates valuable insights that enables effective personalized advisory and guidance for customers. It can assist customers to identify unique investment options and portfolio strategies based on the insights gathered thus providing and proposing investment opportunities that are personalized and highly attractive based on each customer’s unique behavior and requirements. This personalization increases the chances of success rate. Furthermore, customers also won’t have any restrictions on the number of conversations they can have with the bot.

14.3.6 Use Cases: Bank Voice Bots Currently Available Around the World • Erica, by Bank of America Bank of America (BofA), one of the largest banking and financial institutions in the United States, introduced Erica, an AI-driven virtual financial assistant in late 2018. Erica had 6.3 million users and 15.5 million interactions by early 2019.

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When the pandemic hit the U.S., BofA updated Erica to process more than 60,000 inquiries related to COVID-19, according to the voice bot. A year later, Erica reported that the number of users increased to 19.5 million, and 100 million interactions were recorded with 90% efficacy [7]. Erica has answered more than 250 million questions since it launched [8]. Erica’s capabilities include assisting clients make better financial decisions, by analyzing their habits and financial behavioral patterns to provide them with personalized guidance and proactive insights. Ally Assist, Ally Bank In 2015 Ally bank launched a chat box with Ally Assist within the bank’s Mobile App. Ally Assist interacts with customers by speech or text and it performs a wide range of tasks such as P2P transactions, Transfers, and initiating payments and deposits. It also helps the customers analyze their spending/ saving patterns and generate detailed account information of customers. Ally Assist provides information on customer service queries using natural language [9]. Santandar UK In 2015, Santander was the first UK bank to launch voice banking for its iOS users of the Smart Bank app. The introductory phase is aimed at helping customers get to grips with the basic features, by providing the ability to ask about their card spending. In 2017, it enhanced functionality in the Smart Bank app to enable customers to fully service their accounts. This includes advanced features such as the ability to make payments, report lost cards, set up account alerts, and answer a broad range of questions about their spending [22]. KEYA, Kotak Mahindra Bank Keya is an intelligent voice bot that changes the customers’ preferred voice text and it can understand a customer’s request quickly and guide the conversations toward a prompt response. The technology enabled us to answer a range of bank-related queries such as credit, debit card and car loans, house loans, and fixed deposits and perform tasks like paying bills and ordering cheque book. The usage of voice bots increased up to 1.2 million out of 1.7 million average calls in a month. Since Keya’s chat box launched it has handled 3.5 million inquiries from one million users with 93percent accuracy [10].

Voice Bot Assistance in the Banking Industry  315 • Oleg, Tinkoff Bank Tinkoff is a branchless online financial ecosystem, centered around lifestyle banking. It helps customers review and organize personal spending, invest savings, obtain loyalty card bonuses and make reservations – for example, book a restaurant or a cinema trip. Tinkoff provides its services through its app and its website. Launched in June 2019, Oleg is a personal voice assistant designed to help Tinkoff customers with their daily routines. It attempts to do this through certain learned actions. These operations include paying phone bills, paying credit card bills, presenting the customer’s income and expenses, advising on financial issues, updating personal information in Tinkoff, and talking about several subjects. It also recognizes and protects against calls from fraudsters and spammers. Tinkoff claims that for Tinkoff Mobile subscribers, Oleg is able to answer calls and talk and joke with the caller, translating audio messages into written text [23]. • Ugi, Garanti BBVA Ugi, launched in 2015 is Turkey’s first smart banking assistant. With Ugi on the Garanti BBVA Mobile home page, support can be obtained for more than 200 banking transactions, from money transfers to account and card queries. Users can ask Ugi via voice or text. Since implemented in 2015, when Garanti BBVA’s smart assistant said “hello” for the first time, 5.6 million customers have interacted with Ugi more than 64 million times. As of July 2020, with the addition of its written communication capability, the usage rates of Ugi increased by 70% on a monthly basis. The rate of Ugi’s correct understanding and accurate guidance reached 83%. Today, more than 650,000 customers a month actively communicate with Ugi [11]. 

14.4 Call to Action Voice technology continues to gain popularity and momentum in this new digital era, driven by expectations from digitally savvy consumers. For banks to remain relevant and gain a competitive edge, it’s imperative that they keep abreast of the trends in voice technology and how they are attracting and retaining customers to drive business. As customers

316  Fintech and Cryptocurrency become more familiar and comfortable with voice-driven technology, it will become a necessary expectation for them. Banks must continuously enhance and improve their voice technology to keep up with these new and dynamic expectations.

14.5 Literature Review Voice bot is a new AI technology and is still in the infancy stage of implementation in the banking industry compared to e-marketing. The Capgemini Digital survey discovered that 24 percent of 5000 respondents said they preferred to use voice bots rather than websites [12]. The study found that 51 percent of respondents use the voice assistant’s app on their smartphone and 35 percent said they used voice bots to buy groceries, clothing, and home care products. Google, Microsoft, Apple, and Amazon have linked voice assistants to their delivery systems for their consumers’ convenience. The world’s biggest leader in online shopping, amazon earned the trust of its customers for its effective services. Now it started offering services through home voice bot assistance which is linked to warehouses and vastly distributed systems to cater to millions of customers. Voice bot increases happiness for their consumers by timesaving on searching and providing value convenience [13]. Shevat (2017) stated that consumers recognized the benefits of using voice bots and they are confident that the voice bots can determine the best possible attributes of the available alternatives [14]. Weerabahu et al., (2019) found that chatbot technology increased customer satisfaction and provides solutions to day-to-day issues compared to call centers which are time-consuming and inefficient in Sri Lanka [15]. Wirtz et al., (2018) stated that the “intention of using new technology depends on the cognitive evaluation of ease of use and perceived usefulness” [3]. Recent studies show that consumer adoption of new technology depends on their enjoyment of using the speaker and ease of use to process the information. Firms are focusing on the hedonism of voice bots while reducing the perceptions of security risks [15, 16]. Makridakis (2017) identified that once the customer purchase things through the voice bot, it creates trust that voice assistance chooses a better option for them and they may be afraid of their own choice not being the best [17]. In 2018, professor, Tim Wu wrote in New York Times, “Tyranny of Convenience”. It was stated that: “Today, convenience is the most undervalued and least understood force of the world”. “Convenience in decision making is not a new thing”. This has been practiced for a long time and it is evidenced in

Voice Bot Assistance in the Banking Industry  317 the literature [18]. Convenience is the key influencer of the adoption of AI bot technologies among customers [19]. Additionally, consumer perception is a crucial component of consumers’ willingness to adopt new technology. Consumer perception is an important marketing tool that articulates consumers’ awareness, consciousness, and belief about a new product or service (Dictionary, 2018). The consumers’ positive and negative perceptions will affect the adoption of new technologies. Therefore, the study aims to investigate customers’ perceptions of the adoption of voice bot technology in the banking industry.

14.6 Research Methodology The study adopted a mixed-method approach. 80 respondents participated in the survey and 20 respondents participated in the interview section. The qualitative method has been chosen to explore the depth of the topic. 20 respondents aged from 21 to 32 participated in the study. Among them 11 are male and 9 of them female. The semi-structured interview was conducted on the perception of adopting voice bots in the banking industry. The interview was conducted in a group of 20. The research instruments are based on ease of use, perceived usefulness, security, convenience, and trust which are derived from the literature. The researcher explained what is a chatbot and voice bot and how it is used in the banking industry. The respondents answered that they are all aware of chatbots but were not familiar with voice bots. The following questions are asked to explore the perception of voice bots in the banking industry. 1. Have you used any voice bot such as Siri and google assistant? They said they used the voice assistant to control home electronic devices, listen to music, and talk to someone while they are driving. 2. Have you used mobile banking apps for your banking transactions? Among the respondents, 12 of them said that they have been using a mobile app for transactions. They felt it is easy to transfer and it is secure. Others said they are not willing to take the risk and they don’t trust the mobile app. They are more comfortable using online banking services. 3. What do you think if the voice bot can replace a customer service executive in the near future?

318  Fintech and Cryptocurrency Most of them were excited and said it is interesting. They said they are able to make transfers any time and it is a very convenient and very useful voice assistance bot. Without the need to type or enter numbers in the system. it is going to be easy for them. However, eight of the respondents said they won’t use it because they are afraid of security, and they don’t want to take risks related to financial matters. Most of them said it saves a lot of time, and they perform any transfers anytime through the app. Two respondents further asked whether the voice is going to be a female voice or a male voice. Many of them doubted whether the voice bot can recognize their language and the ascent of the speech. A few of them said they may not use it because they are afraid the voice bot cannot understand their language. Most of them preferred to use voice assistance instead of using a chatbot and find chatbots to be boring. They believe it is cumbersome and time-consuming. 4. Do you think it is going to be more comfortable using voice bots for some basic tasks such as balance checking and making payments? Most of them said they believe it is going to be easy and convenient. Some said it is going to be fun to use the app for transactions by voice assistant and save a lot of time. Some respondents said that there is human touch when they talk to voice bots and also they do things fast compared to chatbot conversation. Four of them said that they are not confident in using the voice bot for transactions. They may use it for getting information. They cannot trust the app and they do not want to use it for financial transactions. The findings concluded that pleasure, convenience, time-saving, and perceived ease of use are the driving force for consumers to use voice bots in the banking industry in the future. Perceived risk, language recognition, data security, and lack of trust and confidence are the avoiding factors preventing them from using voice bots.

14.7 Descriptive Analysis Survey questions were sent out to 100 respondents. Only 80 respondents returned the survey questions. Table 14.1 shows respondents’ demographic

Voice Bot Assistance in the Banking Industry  319 and descriptive analysis. Among the respondent 38.75 percent of them are female and 61.25 percent were male. 76 percent of them belong to the age group between 21 to 26 and 24 percent of them are from the 27 to 31 age group. Among the respondents, 65 percent of them have used a chat bot and 35 percent of them have never used a chat bot. 63.75 percent of them have used a voice bot and 32.25 percent never used it before. 67.25 percent of them used banking transactions through the mobile app and 32.75 percent of them never used the mobile app. 68.75 percent of them said they are willing to use voice bot assistance, 23.75 percent of them said they are Table 14.1  Respondents’ profile. Gender

Percentage

Female

38.75

Male

61.25

Age 21- 26

76

27 to 32

24

Have you used Chat bot? No

35

Yes

65

Have you used Voice assistant? Yes

63.75

No

36.25

Have you used a mobile app for transactions Yes

67.5

No

32.5

Will you use in future voice assistant bot in banking transactions Yes

68.75

No

23.75

Not sure

7.5

320  Fintech and Cryptocurrency not going to use voice bot assistance and 7.5 percent of them are not sure about it. Figure 14.3 shows that 21.25 percent of them used a voice assistant to choose a song, 15.25 percent of them used to get information, 25 percent of them used to control devices in their home,13.75 percent of them used for entertainment,17.25 percent used to call someone while driving and 6.25 percent of them used to read the message for them. Figure 14.4 shows the respondents’ opinions on using voice bots. 27.27 percent of them using for convenience, 34,55 percent of them for saving time, 15.36 percent of them want to multitask, 14.55 percent feel it is easy to use and 7.27 percent said it gives pleasure to them.

30 25 20 15 10 5 0

25

21.25

16.25

13.75

17.5

th e.. . ad re

To

To

e.. . co nt ro lh om e.. . En te rta in m en To t ca ll s om e on e.. .

om ts Ge

Lis

te

n

m

us

ic

6.25

Figure 14.3  Voice bot usage of the respondents.

40.00

34.55

35.00 30.00

27.27

25.00 20.00

16.36

15.00

14.55 7.27

10.00 5.00 0.00 Convenience

save time

I can do multitask

Easy to use

Figure 14.4  Reasons for using voice bots in banking transactions.

It is fun

Voice Bot Assistance in the Banking Industry  321 Reasons not to use voice assistant bot 25 20

20

20

15

20

20

12

10

8

5 0 I dont feel it is secure

Risk

I don’t think ,it will recognise my voice

I am not confident

easy to attack I am scared to by scamers use

Figure 14.5  Reasons not to use voice bot in banking transactions.

Figure 14.5 shows the reasons for not using the voice bot. 20 percent of them feel that it is not secure, 20 percent of them do not want to face any risk, 12 percent of them doubt it will recognize their voice/accent, 8 percent of them feel easy for scammers to attack, and 20 percent of them are not confident in using the voice bot for banking transactions.

14.8 Discussion and Conclusion The study revealed that perceived risk, trust, security, language recognition, and scams are the main concern of customers making the decision not to adopt voice bot assistance in banking transactions. Nevertheless, we find that the majority of the respondents are willing to adopt voice bot assistance in the banking industry. The finding is in line with previous studies that the voice bot can save a lot of time, allows multitasking, and have trust it makes the right decision [17]; provide convenience [18], and enjoyment [15]. The study also contributed to the theory of social presence in the context of voice bots in virtual environments. Previous studies show that social presence has a significant impact on customer satisfaction by 60 percent within a computer-mediated form of communication [20]. Hassaein and Head (2007) found that implementing voice assistant and pictures increase the user’s satisfaction and experience [21]. A voice bot recognizes speech and interprets language commands while providing a

322  Fintech and Cryptocurrency human touch and the feeling of interacting with a real person. The study shows there is a significant impact on customer satisfaction and pleasure in using voice bots in the banking industry. Perceived risk, trust, and fear of language recognition are the concern of customers regarding the adoption of voice bots in the banking industry. Nevertheless, the present generation’s decision-making depends on convenience. Therefore, voice bot assistance may be adopted without any issues by the majority of the people. The study discussed the description of voice bot, it challenges consumers’ perception of adopting it. Due to time constraints, the study has to be conducted with limited respondents and larger sample size could have given higher reliability of the data. The limitation of the research is that not many respondents had taken part in the study due to time and many of them were not aware of voice bot assistance. Larger sample size could have given higher reliability of the data. Future research should be conducted with a larger number of samples and various age groups of people.

References 1. U. Gretzel, “The transformation of consumer behavior,” in The Routledge Handbook of Tourism Marketing-n Tourism Business Frontiers, D. R. Fesenmaier, Ed. London : Taylors & Francis, pp. 31–40. 2. K. N. Lemon and P. C. Verhoef, “Understanding customer experience throughout the customer journey,” Journal of Marketing, vol. 80, no. 6, pp. 69–96, 2015. 3. R. Chotia, A. Tyagi, N. Ayyagari, and A. C. Fernandes, “100 best chatbot statistics for 2022 [latest BOT statistics],” Verloop.io, 04-Jul-2022. [Online]. Available: https://verloop.io/blog/100-best-chatbot-statistics/#h-market-chatbot-statistics. [Accessed: 15-July-2022]. 4. S. B. Banerjee, “Voice bot in enhancing the future of Banking System,” C-Zentrix. [Online]. Available: https://www.c-zentrix.com/us/blog/voicebot-in-enhancing-the-future-of-banking-system. 5. “Chatbots: The definitive guide,” Conversational AI Platform for Enterprise Teneo | Artificial Solutions, 21-Jun-2022. [Online]. Available: https://www. artificial-solutions.com/chatbots. 6. S. Chambers, “The importance of customer loyalty,” Nicereply, 11-May2020. [Online]. Available: https://www.nicereply.com/blog/the-importanceof-customer-loyalty/.

Voice Bot Assistance in the Banking Industry  323 7. M. Shahab, “A deeper look into what makes a successful chatbot with Bank of America’s Erica,” Tearsheet, 26-Aug-2021. [Online]. Available: https://tearsheet.co/artificial-intelligence/a-deeper-look-into-what-makes-a-successful-​ chatbot-with-bank-of-americas-erica/. 8. E. H. Schwartz, “Bank of America’s Virtual assistant Erica explodes in popularity,” Voicebot.ai, 21-Apr-2021. [Online]. Available: https://voicebot.ai/2021/04/21/ bank-of-americas-virtual-assistant-erica-explodes-in-popularity/. 9. J. Marous, “Meet 11 of the most interesting chatbots in banking,” The Financial Brand, 14-Mar-2018. [Online]. Available: https://thefinancialbrand. com/71251/chatbots-banking-trends-ai-cx/. 10. Dr. Shalini Sayiwal and Asst.Prof., Alankar P.G.Girls College, Jaipur. (2021). Chatbots in Banking Industry: A Case Study. Journal of Emerging Technologies and Innovative Research (JETIR), vol.7 no.6, June 2020. [Online]. Availabe : JETIR2006221.pdf 11. A. R. Rodríguez, “Garanti BBVA interacts with more than 650,000 customers a month with its smart assistant Ugi,” NEWS BBVA, 30-Dec-2021. [Online]. Available: https://www.bbva.com/en/tr/garanti-bbva-interacts-with-morethan-650000-customers-a-month-with-its-smart-assistant-ugi/. 12. Sengupta, A. Empathetic intelligence: how smart voice assistants are driving consumer convenience, Capgemini Research Institute, 2018, available at: www. capgemini.com/2018/09/voice-assistants-driving-consumer-­convenience/ (accessed 17 January 2022. 13. A. V. Whillans, E. W. Dunn, P. Smeets, R. Bekkers, and M. I. Norton, “Buying time promotes happiness,” Proceedings of the National Academy of Sciences, vol. 114, no. 32, pp. 8523–8527, 2017. 14. Shevat, A., Designing Bots: Creating Conversational Experiences, “O’Reilly Media, 2017. 15. D. Weerabahu, A. Gamage, C. Dulakshi, G. U. Ganegoda, and T. Sandanayake, “Digital assistant for Supporting Bank Customer Service,” Communications in Computer and Information Science, pp. 177–186, 2019. 16. P. Klaus and J. Zaichkowsky, “Ai Voice Bots: A services marketing research agenda,” Journal of Services Marketing, vol. 34, no. 3, pp. 389–398, 2020. 17. S. Makridakis, “The forthcoming Artificial Intelligence (AI) revolution: Its impact on society and firms,” Futures, vol. 90, pp. 46–60, 2017. 18. J. E. Collier and S. E. Kimes, “Only if it is convenient,” Journal of Service Research, vol. 15, no. 1, pp. 39–51, 2012. 19. D. Grewal, A. L. Roggeveen, and J. Nordfält, “The future of retailing,” Journal of Retailing, vol. 93, no. 1, pp. 1–6, 2017. 20. C. N. Gunawardena and F. J. Zittle, “Social presence as a predictor of satisfaction within a computer‐mediated conferencing environment,” American Journal of Distance Education, vol. 11, no. 3, pp. 8–26, 1997.

324  Fintech and Cryptocurrency 21. K. Hassanein and M. Head, “Manipulating perceived social presence through the web interface and its impact on attitude towards online shopping,” International Journal of Human-Computer Studies, vol. 65, no. 8, pp.  689– 708, 2007. 22. “About Santander UK,” Santander UK, 22-Mar-2015. [Online]. Available: https:// www.santander.co.uk/about-santander/media-centre/press-releases/santanderbecomes-first-uk-bank-to-launch-voice-banking. [Accessed: 12-April-2022]. 23. “Тинькофф - финансовые услуги для физических и юридических лиц,” Тинькофф Банк. [Online]. Available: https://www.tinkoff.ru/about/ news/06102015-tinkoff-named-the-largest-digital-bank-eng/. [Accessed: 15-April -2022].

15 Application of Technology Acceptance Model (TAM) in Fintech Mobile Applications for Banking Tabitha Durai and F. Lallawmawmi* Department of Commerce, Madras Christian College, University of Madras, Chennai, India

Abstract

The rising prominence of Fintech payment services has a great impact on banking. It is increasingly becoming a global trend. Mobile payment applications and gateways are a well-liked use of Fintech services for banking. Of course, contactless payments are much more appreciated in today’s world. This research paper aims to study the factors that influence customers’ usage of Fintech services for banking. A descriptive and analytical study was conducted through a structured Questionnaire. The Technology Acceptance Model is used to examine the extent to the perceived usefulness, brand image, and perceived risk influence the usage of Fintech. The data have been analyzed and hypotheses have been tested by using statistical measures and quantitative methods. This study identified three factors Perceived usefulness, Brand image, and Perceived risk which influence the usage of Fintech services for banking. Perceived usefulness is the most enabling influencing factor on the usage of Fintech services. The results show that perceived usefulness and brand image have a significant positive influence on the usage of Fintech services, while perceived risks do not significantly affect the usage of Fintech services. It is expected that the findings of this empirical study would have enabled adding to the present contributions on the subject. Keywords:  Fintech, banking, fintech services, mobile banking, mobile payment, perceived usefulness, brand image, perceived risks

*Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (325–350) © 2023 Scrivener Publishing LLC

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326  Fintech and Cryptocurrency

15.1 Introduction Financial Technologies (Fintech) have transformed banking and financial services operations worldwide during the past years. The emerging importance of fintech (Financial Technology) applications greatly impacts the banking and finance sectors in many ways. The advancements in Fintech have a dramatic effect on traditional banking and financial services sectors in terms of operations. It was originally applied for back-end systems and is now used in many additional applications such as mobile payments, online banking, fund management as well as stock trading. In a nutshell, the basic process of payment methods has been transformed through the use of digital technology and the financial ecosystem has been changed by Fintech [1]. The rising technologies and the fintech companies use digital tools to transform the way we bank and evolve the banking industry from physical to digital and then to hybrid banking models. With the help of fintech banking services, self-service capabilities provide bank customers with operational processes such as checking account balances, transferring money, opening new accounts, opting for loans, and buy insurance, etc. digitally [2]. FinTech is increasingly becoming a global trend and is now attracting the attention of FinTech regulators in the past, present, and future in the financial and banking industries. Nowadays, FinTech is an industry that uses Information Technology concentrated on smartphones/mobile phones to improve financial system efficiency [3]. The term ‘Fintech’ is derived by joining two words which are ‘financial’ and ‘technology’. FinTech indicates the use of digital technology to come up with innovative financial products and services such as mobile payment, online banking, big data, alternative finance and overall financial management [4]. Fintech refers to new technology that seeks to improve and automate the delivery and use of financial services and products. When it emerged in the 21st Century, the term ‘Fintech’ was introduced as a technology employed in the back-end systems of established financial institutions and banks [5]. Now, it encompasses several applications that are consumer-based which leads to more consumer-oriented services. By 2019, through this technology, you can manage funds, trade stocks and even pay for insurance, etc [4]. Fintech services are software, algorithms and applications that are used on both computers and smartphones. It also includes hardware in the same cases. Fintech platforms enable a variety of financial activities like money transfers, depositing checks, paying bills or applying for financial aid. They also include developing and using crypto exchanges and encompass technically intricate concepts like peer-to-peer (P2P) lending [6].

Application of TAM in Fintech for Banking  327 There are many different types of fintech, some of the most popular examples are: (a) Mobile payment and wallet apps like Google pay, PayPal, Apple Pay, Square, and Venmo allow users to send one another money from their mobile devices through a linked bank account or card [7]; (b) Crowdfunding platforms such as Kickstarter and GoFundMe, have replaced traditional funding options by allowing platform users to invest their money in businesses, products and individuals, and allow them to cross geographical boundaries by in contact with global markets and investors [8, 9]; (c) Cryptocurrency and blockchain technologies are some of the most well-known examples of fintech. Cryptocurrency exchanges such as Coinbase and Gemini, allow users to buy or sell cryptocurrencies ­(bitcoins), these currencies are stored in a decentralized manner under which money transactions are verified using blockchain technologies [8, 9]; (d) Robo-advisors such as Betterment and Ellevest, are online investment-­management services, consist of algorithm-based portfolio recommendations and management to lower costs and increase efficiency [8, 9]; (e) Stock trading apps such as Robinhood and Acorns allow investors to trade stocks from anywhere with their mobile devices instead of visiting stockbrokers [8]; (f) Insurtech companies are engaging with traditional insurance companies to automate the procedures at it entirely and allowing them to expand claim-coverages [9]. The latest Fintech business model research hotspots are mobile payments, P2P lending, crowdfunding and microfinance [10]. The most popular Fintech service to have been used was in the banking and payments category in 2019 [11]. In 2021, digital banking and bill payments were the most dominant uses of fintech services [12]. Mobile banking was already gaining popularity even before the outbreak of coronavirus in 2019, but the disruptions and restrictions caused by Covid-19 have moved banking through mobile from novelty to necessity [13]. Mobile payment applications and gateways are a well-liked use of fintech services that enable banking through mobile devices/smartphones without the need for physical contact between the bank and its customers [1]. They come under the most prevalent uses of fintech services to conduct banking activities without appearing physically in the bank [9]. Fintech services like mobile payments consist in making payments and transactions between individuals easily, fast, and convenient, anytime and anywhere, using a mobile phone/smartphone. It also provides greater security for users in the interactions derived from money transactions [14]. The development and exploitation of new technologies make opportunities, exclusively for numerous local economies, to promote their products globally at low cost, anticipating a bigger

328  Fintech and Cryptocurrency share not only from local markets but also from the global travel market and following the same path when it comes to financial transactions [10]. Fintech services like mobile/digital banking apps (Fintech payment services) can warn customers when they spend more than they have in their account and allow them to set controls on their cards to restrict spending. Banking apps can also make it easy to transfer money and reach customer service representatives with the tap of a button [13]. Some of the benefits of mobile banking apps are: (a) Mobile banking apps enable banking from anywhere at any time and make it convenient for the customers; (b) Mobile banking apps guarantee paramount safety and security for all money transactions. Cybersecurity and multi-layer encryption are important for mobile banking apps; (c) Mobile banking apps make it easier to monitor the flow of money to and from an account by giving all the information in a single app; (d) Customers who use mobile banking have better access and control of their financial transactions which make them more likely to catch any suspicious activities and to prevent any kind of frauds; (e) Mobile banking is sustainable in terms of energy and saving time, they are also environment-friendly since they save unnecessary paperwork unlike traditional banking [15]; (f) Mobile banking enables to set up of automatic payments for regular utility bills; (g) It reduces the risk of counterfeit currency with digital fund transfers and restricts the circulation of black money; (h) Mobile banking apps strengthen privacy and security for the users [16]. The advantages of mobile banking/payment service for both bank institutions and customers include easy access anywhere, availability on 24 hours basis, control over your money, and reduction in the cost of handling banking transactions [17]. The main advantage of Fintech services/ applications like mobile banking to both customers and banks is the opportunity of being on the same page. When a bank meets its customers’ expectations and satisfies their needs, it attracts more customers to the bank and speeds up its growth. A large number of mobile banking users proves that Fintech services/applications have a lot of advantages for banking. Among the advantages of mobile/online banking is that users need less time to perform simple money transactions. All the customers need is the internet since no branch visit is needed. They can check their accounts, access information and get notifications about the bank news at any time. There are also benefits of fintech services like mobile banking apps for banks themselves. Banks can serve customers at any time since customers can access and check their accounts, and make money transactions independently everywhere at any time. Fintech services also help banks in time-saving and give more time to assist those customers who

Application of TAM in Fintech for Banking  329 need personal attention which improves the workflow. Other benefits of Fintech services for banks are saving on operational costs, reducing costs by going paperless and saving money on printing [18]. Using mobile payment services requires the user to open an account at his or her bank and receive payment instruments such as card, etc. that are linked to the account from the issuing bank to pay merchants online or offline. Mobile payment services can be separated into Fintech payment service that links with financial institutions through IT companies and existing payment service that directly links to financial institutions. In both services, payments are made directly to the service provider or through an integrated payment agency, that supports both existing payment services and Fintech payment services. However, traditional payment services have some limitations and problems when compared to the Fintech payment services even though they use IT technology like Fintech payment services. Fintech payment service allows user to use an independent customized payment service that is not dependent on the payment service of the financial institution but that is personalized to the convenience of the user of specific financial institution. Unlike traditional payment services, Fintech payment service providers can customize payment services according to the needs of the user as well as the merchants, and it has more diverse purposes and methods of use [19]. Fintech competitors are intruding on the traditional business of banks, even though banks are conforming to the digital world. New competitors are allowed to use hard (codifiable) information to erode the traditional relationship between bank and client, based on soft information (the knowledge gained from bank and client relationships). Still, in order to avoid compliance costs, utmost new competitors stay clear of asking for a banking license and try to skim profitable business from banks. Implicit advantage of the new entrants lies in exploiting the distrust towards banks that millennials have developed at the same moment that they offer digital services with which the youngish generation is at ease [20]. Payments and particularly retail-related payments areas seem most open to Fintech. This core area of banking is being wanted by technology firms and payment specialists such as Google, Apple and PayPal. Banks have maintained their central role in payments until now. The payments innovators have developed in joint ventures or other types of alliances with traditional banks, as they are not typically independent of banks [21]. Technology Acceptance Model (TAM) is often used for the technology users’ acceptance testing. It was introduced in 1989 by Davis in his PhD thesis. There are two objectives described by Davis, the first is to improve the understanding of the user acceptance process and the

330  Fintech and Cryptocurrency second is that TAM provides a theoretical basis for practical user acceptance testing [22]. TAM has become one of the most widely used models in the field of information technology adoption research because it explains the difference in consumer willingness to adopt information technology and can be specified and improved according to the analysis problem [23]. TAM has been used to study Technology Acceptance Model of Financial Technology in Micro, Small, and Medium Enterprises (MSME) in 2020 [22]. In this research, the researchers included external variables such as level of education, business age and business size to predict Perceived Usefulness (PU) and Perceived Ease of Use (PEOU). Zhongqing Hu, Shuai Ding, Shizheng Li, Luting Chen and Shanlin Lang [23] used TAM to analysed the key factors influencing the adaptation of Fintech services through empirical research as well as the behavioural intentions of users. Data was collected from 387 randomly selected active customers of the Hefei Science and Technology Rural Commercial Bank who had used Fintech services of the bank and analysed through structural equation model (SEM) to test the hypothesis including the relationships of all latent variables. They found that brand image, government support, user innovation and user’s trust in fintech services have positive impact on the adaptation fintech services while perceived ease of use has no significant influence on user’s attitudes for adaptation of fintech services. Li Min Chuang, Chun Chu Liu and Hsiao Kuang Kao [26] also applied TAM in order to understand the consumer behavioural intentions in using Fintech service and found brand and service trust, perceived usefulness, perceived ease of use and attitudes towards using have a significant positive effect on behavioural intention to use. In the Unified Theory of Acceptance and Use of Technology (UTAUT) by Tun-Pin Chong et al. [24] TAM has been used to examine the extent to that perceived usefulness, perceived ease of use, social influence, personal innovativeness, security concerns, perceived enjoyment and demographic profile affect the intention to adopt Fintech in 2019. They found out that all the constructs that are mentioned above had a significant and positive relationship with the intention to adopt Fintech in Malaysia. Kavitha Lal, M. Suvarchala Rani and P. Rajini [39] studied to identify the influencing factors on the Bank customer adoption of Fintech in Hyderabad. A sample size of 101 was collected and analysed using ANOVA, Exploratory Factor Analysis (EFA) and Multi Variant Regression Model. The study found that the most enabling influencing factor was Conducive among three factors such as Conducive, Adaptability and Security, which was identified. Ivanka Vasenska, Preslav Dimitrov, Blagovesta Koyundzhiyska-Davidkova,

Application of TAM in Fintech for Banking  331 Vladislav Krastev,Pavol Durana and Ioulia Poulaki [10] studied to present a survey analysis of Fintech utilization of individual customers before and after COVID-19 pandemic in Bulgaria using statistical measures and quantitative methods including ANOVA and two-sample paired t-tests and Levene’s test. The research targeted 242 Bulgarian adult and found that majority of the respondents are less familiar with Fintech services before the COVID-19 crisis, however some of them were planning to change their attitudes towards the adaptation of fintech services and use it more after COVID-19 pandemic.

15.1.1 Significance of the Study Fintech services like mobile payment/banking apps are incredibly convenient and powerful tools which give an important advantage to customers. Mobile banking has made money transactions user-friendly and virtual access much faster for the customers. Fintech services like mobile banking/payment apps became more common as users became comfortable with the technology and find it useful in their day-to-day life. Contactless payments are much more appreciated in today’s world which makes mobile banking apps popular among banks’ customers. Therefore, the current research attempted to identify the factors that influence customers’ usage of Fintech services for banking. The findings could provide the Fintech sphere with information to target, diversify, and popularize their products better on the market. It could also provide users assessment and empirical framework for banks to adopt new and user-oriented services.

15.1.2 Research Objectives Fintech has become an important and interesting topic given the fastgrowing change in information technology. The development of Fintech such as mobile banking has contributed to the increasing advancement in technology productivity. The services offered by the financial institutions continue to challenge and cater to the attitudes of consumers who are accepting of new technology products to gain market opportunities [24]. It is used to determine the adoption of Fintech services. Studies on the usage of Fintech and the factors that influence the usage of Fintech among bank customers are very limited. Hence, the current study aims to explore the various factors that influence customers’ usage of Fintech applications for banking. The present study identifies the most enabling influencing factor on the usage of Fintech services for banking. The study also identifies

332  Fintech and Cryptocurrency whether the various factors have a significant positive influence on the usage of Fintech services for banking.

15.1.3 Hypotheses of the Study In this study, TAM is used as the foundation and referenced relevant literature. The Technology Acceptance Model (TAM) developed by Davis, is an adaptation of the Theory of Reasoned Action (TRA). It defines perceived usefulness and perceived ease of use as two determinants of individuals’ attitude toward the behavioural intention and usage of technology [25]. Technology Acceptance Model (TAM) was proposed from the perspective of behavioural science, self-efficacy theory and integrating expectation theory, it is mainly used to study the individuals’ behavioural intentions to use technology [23]. The TAM assumes that the key determinant of behavioural intentions of an individual depends on their beliefs about their subjective evaluation of the usefulness of the technology and their own ability to use a piece of technology [26].

15.1.3.1 Perceived Usefulness Toward the Usage of Fintech According to the Technology Acceptance Model (TAM), perceived usefulness is a factor widely used in the process of information system adoption and is defined as the degree to which a consumer using this new technology would improve their work efficiency [27]. A large number of empirical studies on the adoption of information technology during the last decade have shown that perceived usefulness and ease of use can have a positive impact on users’ intentions [23]. In the TAM, perceived usefulness is the level of confidence a person has in using a specific system to augment his or her performance in a job or task. In other words, it leads to the consumer’s attitude toward the performance concerning the outcome of the experience [24]. Perceived ease of use is the level of a person who believes that online transactions through mobile banking would be effortless [28]. People assess the consequences of their behaviour in terms of perceived usefulness and their behavioural choices are based on the attractiveness of the perceived usefulness [29]. Hence, the following hypothesis is proposed. Hypothesis 1 (H0 1) = Perceived usefulness has a significant positive effect on the consumers’ usage of fintech services.

Application of TAM in Fintech for Banking  333

15.1.3.2 Brand Image Toward the Usage of Fintech The brand effect of service providers plays a positive role in promoting users’ achievements of their intended purposes and thus has a significant influence on the provision of reliable services to users [30]. A large number of studies on Fintech proved that brand image has an important influence on users’ perceptions of quality, value and satisfaction [31]. According to psychological research results, a decent brand image can create trust among users [32]. Therefore, brand image is the guarantee of products and services, which enables users to clearly define the service orientation of the enterprise, improves user recognition and satisfaction, helps enterprises and users build a solid relationship, and ultimately affects customer recognition and builds trust [33]. Hence, the following hypothesis is proposed. Hypothesis 2 (H0 2) = Brand Image has a significant positive effect on the consumers’ usage of fintech services.

15.1.3.3 Perceived Risks Toward the Usage of Fintech Perceived risk refers to the form of lack of trust, and most scholars believe that perceived risk is the main factor that negatively affects the adoption of technology [34]. In this paper, perceived risk refers to the financial risk as well as privacy risk that users perceive when they choose fintech services for banking. The users are more concerned about the misuse of their personal information when using fintech services for banking which may lead to more serious consequences. Based on these considerations, perceived risks arising from the use of fintech can significantly affect the willingness of users to use financial technology for banking [35]. Hence, the following hypothesis is proposed. Hypothesis 3 (H0 3) = Perceived Risk (PR) has a significant positive effect on the frequency of usage of fintech services. TAM has become one of the most widely used models in the field of information technology adoption research because it clearly explains the difference in consumers’ willingness to adopt information technology and can be improved, and also specified according to the analysis problem [23]. Many scholars have focused on factors that affect the use of new technologies, including ease of use, result demonstrability, relative advantage, visibility, compatibility, image, trialability and voluntariness. The perceived usefulness and perceived ease of use would affect the individuals’ behavioural intention of the use of new technologies and would also

334  Fintech and Cryptocurrency be affected by the external variables including individual characteristics, organizational support and system characteristics [25].

15.2 Methods and Measures The current study aims to establish individual customers’ utilization of fintech services for banking. This is a descriptive and analytical study based on primary data and secondary data. A structured questionnaire was administered using Google forms to collect primary data. The questionnaire was adapted from multiple literature reviews. Journals, websites, newspapers and books were used as secondary data sources. The population evaluation is based on the results of a survey questionnaire conducted on 100 respondents. This study implemented the convenience sampling method to get a bigger size of sample. Balter and Brunet [36] stated that the use of new technologies such as social networking sites can be effective for the study of “hard-to-reach” populations. Thus, this study was conducted using Google form, which was distributed through social networking sites. The pros and cons of online surveys have been studied and applied as compared to other data collection methods. Online surveys have the advantages of being faster, cheaper, more accurate, and independent in the cases of time and space when compared to other data collection methods such as face-to-face, telephone, and mail surveys [10]. The disadvantage of online surveys is that investigators can encounter problems as regards sampling when conducting online research [10]. The study recommends that it is necessary to outline the demographic factors of the respondents in terms of their gender, age, and occupation. The sample characteristics of the respondents such as gender, age, occupation and the frequency of the usage of fintech services have been analyzed by using descriptive statistics percentage analysis. The data have been analyzed and hypotheses have been tested by using valid statistical tools using IBM SPSS Statistics 22. Data and results have been interpreted based on the resulting output. It also includes the option to carry out more advanced statical processing as well as to create scripts to automate analysis. Multi Variant Regression Model and ANOVA were used to test the hypotheses. Bryn Farnsworth [37] stated that SPSS (Statistical Package for the Social Sciences) is possibly the most widely used statistical software package. It offers the capability to easily compile descriptive statistics, parametric and non-parametric analyses. It also offers the ability to easily compile graphical depictions of results through

Application of TAM in Fintech for Banking  335 the graphical user interface (GUI). It also includes the option to carry out more advanced statical processing as well as to create scripts to automate analysis. It is inevitable to use the tools provided by statistical methodology in the collection, summary, and analysis of empirical data. The 5 points Likert-type Scale (i.e., strongly disagree (1), disagree (2), neutral (3), agree (4), and strongly agree (5)) is applied in the questionnaire that was distributed to gather data. The Likert scale provides five possible answers to a question or statement which is used to let the participants to indicate how much they agree or disagree regarding the particular question or statement [38].

15.2.1 Instrument Development This paper made full reference to the problems of research scholars in relevant research and made adjustments and expansions according to the characteristics of Fintech services studied as shown in Table 15.1. Perceived usefulness and ease of use (PU), Brand Image (BI) and Perceived Risk (PR) were adopted from Zhongqing Hu et al. (2019), Li-Min Chuang et al. (2016) and Kavitha Lal et al. (2020) [23, 26, 39]. The scale consisted Table 15.1  Measurement instruments relating to factors of Fintech. Latent variables

Measurement instruments

Sources

Perceived Usefulness (PU)

Useful

Zhongqing Hu et al. (2019), Kavitha Lal et al. (2020), and Li-Min Chuang et al. (2016);

Easy to use Save time Convenient Availability Meet service needs

Brand Image (BI)

Good services system Maintain data security

Zhongqing Hu et al. (2019) and Kavitha Lal et al. (2020)

Good reputation Perceived Risk (PR)

Cyberattacks Money can be stolen

Kavitha Lal et al. (2020).

336  Fintech and Cryptocurrency of three latent variables as external influencing factors and each variable was composed of three to six measurement variables. Likert Scale was used in the questionnaire to express the item of each measurement variable. Participants were obliged to express their attitudes according to their true opinion. The five options were: strongly agree, agree, neutral, disagree and strongly disagree. The Technology Acceptance Model (TAM) is used to examine the extent to that perceived usefulness, brand image and perceived risk influence the usage of fintech services for banking. This paper studies the influence and relationship of the frequency of usage of fintech services for banking and conducts in-depth research and discussion on it through a technology acceptance model (TAM). The TAM explains the relationship between behavioural intention that predicts a user’s acceptance of information technology [40]. TAM posits that if innovation or technology enhances an individual’s performance, it is considered useful and the person will be more likely to adopt the service, technology or behaviour. The results of numerous studies have supported the reliability and validity of the perceived usefulness and perceived ease of use variables in the Technology Acceptance Model [41].

15.3 Results The findings of statistical analysis are presented in this section i.e., to identify the various fintech services or applications used for banking and to study the factors that influence consumers’ usage of Fintech Applications.

15.3.1 Demographic Profile of the Respondents Based on the demographic factors, a general conclusion could be made that young and student female tend to respond to such online surveys, especially through social media. Another general conclusion regarding the survey, results could be that women tend to participate in such surveys due to the fact that women are perceived as more caring, concerned and sensitive, while men are perceived as more independent, reasonable and strong such differences have been created by society. As for the frequency of the fintech services usage, frequent users are described for a relatively high proportion, which indicates that the popularizing rate of fintech payment services is relatively high at present.

Application of TAM in Fintech for Banking  337 In Table 15.2, 60% are females and the majority of the respondents, that is 80% are in the age group of 20-30, while 1% of the total respondents are in the age group of ‘above 50’. Most of the participants are students, that is 43% of the total respondents. An analysis related to the frequency of the usage of fintech services for banking shows that 49% of the respondents use fintech services monthly while there is none for ‘never’ option. Table 15.2  Demographic profile of the respondents. Demographic variable

Category

Percentage

Gender

Male

40%

Female

60%

Below 20

5%

20 – 30

80%

30 – 40

9%

40 – 50

5%

Above 50

1%

Student

43%

Government Employee

8%

Private Employee

11%

Self-Employed

20%

Housewife

4%

Other

14%

Daily

16%

Weekly

29%

Monthly

49%

Yearly

6%

Never

0%

Age

Occupation

Fintech Services Usage (such as Google Pay, PayPal, Apple Pay,etc)

Source: Computed data.

338  Fintech and Cryptocurrency

15.3.2 Factors Influencing Fintech under Technology Acceptance Model (TAM) The five-point Likert Scale is considered an interval scale and the mean is very significant. This paper calculated descriptive statistics – Means and standard deviation for the influencing factors. The means were interpreted as follows:

Strongly disagree = 1.00 – 1.79 (Lower limit – Upper limit), Disagree = 1.80 – 2.59, Neutral = 2.6 – 3.39, Agree = 3.4 – 4.19, Strongly agree = 4.20 – 5.00. In Table 15.3, the mean from the first statement under PU (Perceived usefulness) category is 4.56 which means that the majority of the respondents strongly agreed that fintech services are ‘useful’. The mean from the second statement under PU category is 4.51 which indicates that the majority of the respondents strongly agreed that fintech services are ‘easy to use’. As from the third statement under PU category, the mean is 4.60 which shows that the majority of the respondents strongly agreed that fintech services ‘save time’. In the fourth statement under PU category is 4.32 which means that the majority of the respondents strongly agreed that fintech services are ‘convenient’. The mean in the fifth statement under the PU category is 4.02 which shows that the majority of the respondents are agreed that fintech services are ‘available at any time’. Meanwhile, the last statement under the PU category is 4.10 which shows that the majority of the respondents agreed that fintech services ‘meet their service needs’. In the first statement under BI (Brand Image), the mean is 4.00 that indicates the majority of the respondents are agreed that fintech services have ‘good services system’. The mean from the second statement under BI is 3.88 that means the majority of the respondents agreed that fintech services ‘maintain data security’. The mean is also 3.88 in the last statement under BI category that indicates that the majority of the respondents agreed fintech services have ‘good reputation’. The mean from the first one statement under PR (Perceived Risks) is 2.97 that means the majority of the respondents are neutral as to whether ‘cyber attacks’ can be happen or not in fintech services. The last one statement under PR is 2.78 which shows that the majority of the respondent are also neutral about ‘money can be stolen’ in fintech services.

Application of TAM in Fintech for Banking  339

Table 15.3  Descriptive statistics for factors influencing Fintech under Technology Acceptance Model (TAM). N

Minimum

Maximum

Mean

Statistic

Statistic

Statistic

Statistic

Std. error

Statistic

Useful

100

3

5

4.56

.054

.538

Easy to use

100

3

5

4.51

.059

.595

Save time

100

3

5

4.60

.053

.532

Convenient

100

2

5

4.32

.066

.665

Availability

100

2

5

4.02

.078

.778

Meet service needs

100

3

5

4.10

.061

.611

Good service system

100

3

5

4.00

.067

.667

Maintain data security

100

2

5

3.88

.076

.756

Good reputation

100

2

5

3.88

.074

.742

Cyber attacks can happen

100

1

5

2.97

.081

.810

Money can be stolen

100

1

5

2.78

.089

.894

Valid N (listwise)

100

Factors/latent variables Percieved Usefulness (PU)

Brand Image (BI)

Percieved Risks (PR)

Source: Computed data.

Std. deviation

340  Fintech and Cryptocurrency

15.3.2.1 Prominent Factors under Technology Acceptance Model (TAM) that Influence the Usage of Fintech This study used one sample statistic- t-test to identify the most enabling influencing factor among the three factors such as Perceived usefulness, Brand image and Security which influence the usage of Fintech. In Table 15.4, the mean of the Perceived usefulness (PU) factor is the highest among the three factors which indicate that perceived usefulness (PU) is the most enabling influencing factor for the usage of fintech services. Therefore, Perceived usefulness is the most enabling influencing factor for the usage of Fintech Payment services for banking which is followed by Brand Image (BI) factor and Perceived risk (PR) is the least enabling influencing factor, among the three factors, for the usage of fintech services for banking. Table 15.4  One sample statistics for prominent factors under Technology Acceptance Model (TAM) that influence the usage of Fintech. N

Mean

Std. deviation

Std. error mean

Perceived usefulness

100

4.3517

.46293

.04629

Brand image

100

3.9200

.66349

.06635

Perceived risk

100

2.8750

.77321

.07732

Source: Computed data.

15.3.3 Technology Acceptance Model and the Usage of Fintech There are three factors: Perceived Usefulness, Brand Image and Perceived Risks. This part of the study tends to test the hypotheses of the three factors towards the usage of Fintech services/applications for banking.

15.3.3.1 Perceived Usefulness Toward the Usage of Fintech Based on the previous analysis, perceived usefulness has influenced the users’ intention towards the use of Fintech services as individuals are able to avoid making needless mistakes throughout the commencement of jobs with the assistance of FinTech services. Furthermore, perceived usefulness has a constructive outcome in influencing the usage of Fintech services since users will measure the satisfaction of conducting financial transactions through a technological platform [24]. The ‘usefulness’ of technology acceptance factors has a significant positive effect on the usage

Application of TAM in Fintech for Banking  341 of fintech services for banking. Users believe that the benefits provided by Fintech services are useful, easy to use, save time, convenient, available and meet service needs, which is helpful for increasing customers’ usage of fintech services for banking. When the users believe that Fintech services are more useful, easy to use, save time, convenient, available and meet their service needs for their work, their attitude toward using Fintech services and the frequency of their usage of Fintech services are also higher. Hypothesis 1 (H0 1): Perceived usefulness (PU) has a significant positive effect on the usage of fintech services. The main goal is to determine the most effective factors that influence consumers’ usage of Fintech services for banking. To identify the Perceived Usefulness of the usage of Fintech, the regression model used takes the Usage of Fintech as the dependent variable and the Perceived usefulness (PU) factors of Fintech as independent variables viz., Meet service needs, Save Time, Availability, Useful, Convenient, Easy to Use. The hypothesis for the study is: In Table 15.5, the p-value (probability value) is 0.003 and the value of F is 3.622. From the ANOVA at a 5% level of significance, the p-value is less than 0.05. Thus, the null hypothesis in this situation is rejected and the alternative hypothesis is accepted. Here, when the p-value is less than 0.010, that indicates strong evidence against the null hypothesis. Therefore, it is proved that Perceived usefulness (PU) has a significant positive effect on the usage of fintech services. This result means that if the users’ view regarding the usefulness of the Fintech payment services is more positive, then their general attitude toward the frequency of the usage of Fintech Payment services will be higher.

Table 15.5  ANOVA results for usage of fintech and perceived usefulness factor. Model

Sum of squares

df

Mean square

F

Sig.

1

Regression

11.887

6

1.981

3.622

.003b

Residual

50.863

93

.547

Total

62.750

99

Dependent Variable: Usage of Fintech services Predictors: (Constant), Meet service needs, Save Time, Availability, Useful, Convenient, Easy to Use Source: Computed data. a

b

342  Fintech and Cryptocurrency

15.3.3.2 Brand Image Toward the Usage of Fintech The brand and service reputation of enterprises have positive effects on the trustworthiness of users. The cognition of trust and experiences when using Fintech will directly affect the customers’ usage of Fintech services [26]. In the context of Fintech applications, the perception of the users of the brand has been conceptualized and seen as a precondition for organizational trust. In the process of using Fintech services, private personal information is needed to be provided by the users. A good brand image can improve users’ trust since it reduces risk effectively [23]. When the brand and service trust of users/customers is higher, the attitude toward purchasing the services is more positive. Customers will have a positive attitude toward the service providers when they believe that the information provided by the service providers/enterprises is honest [25]. Hence, the definition of ‘brand image/trust’ in this study is the degree of influence that the service providers’ reputation, data security and service system have on the customers’ frequency of usage of Fintech services for banking. Hypothesis 2 (H0 2) = Brand Image (BI) has a significant positive effect on the frequency of usage of fintech services. The regression model used takes the Usage of Fintech as the dependent variable and the Brand Image (BI) factors of Fintech as independent variables viz., Good Reputation, Good service system, and Maintaining data security to identify the Brand Image toward the usage of Fintech. From the ANOVA at a 5% level of significance, the p-value in Table 15.6 is less than 0.05. In Table 15.6, the p-value is 0.016 and the value of F is 3.597. Thus, the null hypoothesis in this situation is rejected and the alternative hypothesis is accepted. Therefore, it is proved that Brand Image (BI)

Table 15.6  ANOVA results for usage of fintech and brand image factor. Model

Sum of squares

df

Mean square

F

Sig.

1

Regression

6.341

3

2.114

3.597

.016b

Residual

56.409

96

.588

Total

62.750

99

Dependent Variable: Usage of Fintech services Predictors: (Constant), Good reputation, Good service system, Maintain data security Source: Computed data. a

b

Application of TAM in Fintech for Banking  343 has a significant positive effect on the usage of fintech services. This result means that if users have a higher trust level in brand image toward using Fintech Payment services, then their attitude toward the frequency of the usage of fintech Payment services will be more positive.

15.3.3.3 Perceived Risks Toward the Usage of Fintech Previous studies show that security concerns have become a barrier to the use of fintech services like mobile payments as this type of transaction needs the exposure of financial information which is highly personal and sensitive [24]. Mohammad K. Al Nawayseh [42] stated that perceived risks make customers more reluctant to use Fintech, thereby decreasing their intention to use Fintech services/applications. Moreover, due to the intangibility of Fintech applications, the perceived risks of cyber threats and monetary loss inhibit users from using Fintech services. Fintech services usually involve technologies such as the Internet of Things, big data and cloud computing, thus there are some potential risks for users in receiving Fintech services [23]. According to the previous research findings, perceived risk is negatively related to the use of Fintech services/applications and has an opposite influence on the customers’ behavioural intention of the use of Fintech [42]. Hypothesis 3 (H0 3) = Perceived Risk (PR) has a significant positive effect on the frequency of usage of fintech services. The multivariate regression used takes the usage of Fintech as the dependent variable and the Perceived Risks (PR) factors such as money can be stolen and cyber-attacks as independent variables. In Table 15.7, the p-value is 0.118 and the value of F is 2.185. From the ANOVA at the 5% level of significance, the p-value is more than 0.05. Thus, the null hypothesis in this situation is accepted and the alternative Table 15.7  ANOVA results for usage of fintech and perceived risks factor. Model

Sum of squares

df

Mean square

F

Sig.

1

Regression

2.705

2

1.352

2.185

.118b

Residual

60.045

97

.619

Total

62.750

99

Dependent Variable: Usage of Fintech services Predictors: (Constant), Money can be stolen, Cyber Attacks Source: Computed data. a

b

344  Fintech and Cryptocurrency hypothesis is rejected. Therefore, it is proved that Perceived Risks (PR) do not significant positive effect on the usage of fintech services. This result means that the users still use fintech services for banking even though they highly believe that there can be cyber-attacked and money stolen.

15.4 Discussion This paper discusses the factors which influence consumers’ usage of Fintech mobile services/applications for banking. The findings of this research show that Perceived Usefulness is the most enabling influencing factor that has a significant impact on the customers’ usage of Fintech services. This result is consistent with the research results of Kavitha Lal, et al., (2020) [39]. This finding of the study demonstrated that the majority of the respondents are inclined towards Fintech mobile services/applications for banking because of their usefulness, ease to use, time-saving, convenience, availability and services provided. The first hypothesis test of the study shows that Perceived Usefulness has a significant impact on the consumers’ usage of Fintech mobile applications for banking which is consistent with the previous research results of Zhongqing Hu, et al., (2019), Li-Min Chuang, et al., (2016) and Kavitha Lal, et al., (2020) [23, 26, 39]. This result confirms that customers’ positive attitude toward using Fintech Services will increase if the Fintech service enables customers to conveniently, efficiently, and quickly obtain relevant information on performing money transactions under real-time and local restrictions [26]. In the second hypothesis, the finding shows that Brand Image has a significant impact on the consumers’ usage of Fintech services/applications, unlike the research results of [Kavitha Lal, M. Suvarchala Rani & P. Rajini (2020) [39]. This result is aligned with the research results of Zhongqing Hu, et al., (2019) and Li-Min Chuang, et al., (2016) [23, 26]. This result shows that consumers’ attitudes toward using Fintech services will be more positive if customers have higher brand and service trust toward using Fintech services/applications [23]. Meanwhile, the third and last hypothesis test of the study shows that Perceived Risks do not significantly affect the usage of Fintech services, unlike the hypothesis and the research by Zhongqing Hu, et al., 2019 [20], but this result is in accordance with the previous hypothesis and the research by Kavitha Lal, et al., (2020) [39]. The age group of the respondents may be considered as the reason which Perceived risk is not as a more enabling factor as Perceived usefulness and Brand image factors.

Application of TAM in Fintech for Banking  345 It is observed that most of the respondents are between 20 to 30 which can be interpreted that the younger generation is not much concerned about the security issues related to Fintech while they perform financial transactions using Fintech services/applications. The findings could provide the FINTECH sphere with information to target, diversify, and popularize their products better on the market. It could also provide user assessment and empirical framework for banks to adopt new and user-oriented services. Moreover, these findings also indicate that individuals’ usage of Fintech payment services is more influenced by their perceived usefulness than their perceived risks. The high expected value from using Fintech payment services should inspire financial institutions to provide new models, strategies and financial services in the field of Fintech services. However, Fintech service providers should not fail to care about the risk associated with their services, focus on building risk-free Fintech services and should increase security awareness as customers will later have these concerns [42]. Based on the demographic factors, a general conclusion could be made that young women tend to respond to such online surveys, especially through social media. Another general conclusion regarding the survey, results could be that women tend to participate in such surveys due to the fact that women are perceived as more caring, concerned and sensitive, while men are perceived as more independent, reasonable and strong such differences have been created by the society [10]. The current study identified the usage frequency of Fintech services/ applications for banking. According to Zhongqing Hu et al., Tun-Pin Chong et al. and Mohammad K. Al nawayseh [23, 24, 39], the study was based on the users’ behavioural intentions. It would have been better if the influencing factors on the frequency of consumers’ usage of Fintech services/applications would have been included, and the current study was an attempt to fill this gap. Fintech services became more common as users became comfortable with the technology. In today’s world, of course, contactless payments are much more appreciated [43]. The covid-19 pandemic forces consumers to use Fintech services as a convenient and safe tool to conduct financial transactions [44]. It is anticipated that FINTECH will play an important role alongside traditional banks, even replacing their functions in the near future [10]. Suggestions for Future Research The current study focuses on the factors influencing the consumers’ usage of Fintech services/applications for banking. Further research could use multiple dimensions, such as Attitude, Intention, and Government Support

346  Fintech and Cryptocurrency to investigate the role of rules and regulations made by the Government in Fintech Adoption. These aspects could be investigated by subsequent studies and utilising larger samples from around the world to understand Fintech adoption and its relation to the actual usage of Fintech services for banking.

15.5 Conclusion Financial transaction services are one of the largest rapidly growing fintech services. From the study, it was clear that fintech services almost become a necessity for the majority of the respondents due to the advantages it provides along with the operations. Contactless payments are much more appreciated in these days which makes fintech payment services popular among banks’ customers. Thus, the study’s main objective is to observe factors and their significance in contributing to the users of fintech services for banking. It is expected that the findings of this empirical study, based on a reliable sample and effective statistical analysis would have enabled adding to the present contributions on the subject. This study identified three factors Perceived usefulness (PU), Brand image (BI), and Perceived risk (PR) which influence the usage of Fintech payment services for banking. Perceived usefulness is the most enabling influencing factor on the usage of Fintech services for banking followed by the Brand image (BI) factor while Perceived risk (PR) is the least enabling influencing factor among the three factors on the usage of Fintech payment services for banking. The findings of the study demonstrated that the majority of the respondents are inclined towards Fintech mobile services because of their usefulness, ease to use, time-saving, convenience, availability and services provided. The most important findings of the research are that Perceived usefulness and Brand image have a significantly positive impact on the usage of fintech services while Perceived risks do not significantly influence the usage of fintech services for banking. The findings showed that when the users’ view regarding the usefulness of the Fintech payment services is more positive and have a higher trust level in brand image toward using Fintech payment services, then their general attitude toward the frequency of the usage of Fintech payment services will be higher. The study focuses on the factors influencing the consumers’ usage of Fintech payment services/applications for banking. However, the influencing factors in this study have certain limitations. This paper has not studied psychological factors, such as social influences. Risks from multiple dimensions such as financial risks and privacy risks should also analyse.

Application of TAM in Fintech for Banking  347 A comprehensive and effective assessment will help to better analyze the usage of Fintech payment services for banking.

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16 Upsurge of Robo Advisors: Integrating Customer Acceptance C. Nagadeepa1*, Reenu Mohan1, Antonio Peregrino Huaman Osorio2 and Willian Josue Fernandez Celestino2 Department of Commerce, Kristu Jayanti College Autonomus, Bangalore India 2 Universidad Nacional Santiago Antunez de Mayolo, Huaraz, Peru

1

Abstract

The rise of fintech in the digital community opens the door for companies to introduce robo advisors. Robo Advisors have emerged as a result of technological advances, and it is important to use Robo Advisors to manage and direct projects in the financial industry. The portfolio management service is critical for the efficient distribution and use of the surplus of economic activity in large markets. These robots are programmed to eliminate the dangers of prejudice and human error. This research article is about exploring the strengths and weaknesses of robo advisers, and as opportunities and threats, especially when compared to traditional financial advisors and a research framework to understand the acceptance of robo-advisors by investors. The findings of this study provide relevant research on financial institutions, banks, policy makers, asset managers, FinTech developers and financial advisors to increase the acquisition of Robo Advisors through the adoption of sustainable services. Keywords:  Robo-advisor, technology acceptance, FinTech, financial advisor

16.1 Introduction The financial sector is an important link in economic activity. The financial sector is an information-intensive sector, which can change rapidly if you respond to technological advances. As a result, rules may be ignored or *Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (351–382) © 2023 Scrivener Publishing LLC

351

352  Fintech and Cryptocurrency expired immediately, leading to unintended consequences. The financial sector provides a variety of services such as Price exchange is a payment method; Mediation-the process of transferring funds from depositors to borrowers; Risk transfer is a method of pricing and sharing risks; Liquiditythe ability to convert goods into cash with minimal loss of value. Banks and Economy Banks perform various functions in the economy. First and foremost, banks address the information related problems between investors and borrowers with the latest monitoring and ensure the proper use of investors’ funds. However, due to maturity differences between their assets and liabilities, banks are less likely to operate and system risks. Third, banks are contributing to economic growth. Further, they play a vital role in corporate governance. The importance of the various roles and activities of banks varies greatly from country to country but however, banks remain very important in the economic system. Banks can fulfill a normal deposit as a source of income by borrowing directly from the financial markets. Not only that, they can issue short term securities such as commercial paper and/or bonds; or they can temporarily borrow the collateral they have at other institutions to get cash. The most important role of a bank is to become the bridge between lenders with borrowers. They are important in the domestic and international payment system and they make money by lending money to the neediest. Banks recoup extra money from the financial system, and lend the money by way of various trade securities. Banks play a vital role in the formation of monetary policy, which is one of the most important tools for achieving economic growth of a country without inflation by the government. Not only that, banks are important in controlling supply of money at the national level, while the banks facilitate the ease of flow of money in the money markets in which they operate. The Rise of the Machines These phrases appear to be the title of a movie or series or video game rather than financial terms. There is hot talk about the rise of computers in asset management which are human free technology. However, the story was featured on the cover of TIME magazine over 30 years ago. For the first time, the possibility for human like robots and digital solutions to take over the economy was clearly demonstrated. At the same time, technological change was taking its toll on many industries, including music, publishing, photographic technology and retail. Also, since the 2008 financial crisis, the financial industry has been in serious danger of collapse.

Upsurge of Robo Advisors  353 It is noteworthy, however, that the financial sector is not unaware in the use of technology. Capital has been innovating in capturing individual profits through new technologies. One of the best examples for these technologies is distant market which is gradually used by the entire world. M2M (Machine to machine), IoT are the combination of smart technology connected devices and their interaction is operated by the human being without human intervention. The introduction of the smartphone was the same technological change that had a profound effect on customer behavior and expectations of the banking service. As a result, it should come as no surprise that FinTech have come up with the new technology and idea of automating/human-free asset management process. It is not the question of is it mandatory, but how effective we can use this effectively to make ease of our work [1]. Artificial Intelligence Artificial intelligence is a branch of computer science that aims to build intelligent machines that mimic human behavior. Learning, decision-making, planning, and speech recognition are all human AI machines designed to perform. Artificial intelligence allows machines to improve their performance continuously without the need of humans to give specific instructions on how to do so. AI technology is superhuman in operation, which is operating faster and more precisely than humans. Computers and algorithms are used to develop and mimic human intelligence in Artificial Intelligence (AI). It is a fully functional machine. In general, any analysis such as data analysis or market analysis are done on the basis of information presented in a computer program not based on the natural intelligence of a machine [2]. Automation’s promise of better performance and lower cost efficiency has further enhanced digital performance as a major industry practice [3]. Creating alpha, improving efficiency, improving product and distribution of content, and risk management are all pillars of AI transformation. Beyond business, AI may be used to mimic complex risks and perform stress tests. Traditional risk factor analysis can be challenged using the AI risk model, which demonstrates the benefits and drawbacks of each type of decision support tool. Big data and Artificial Intelligence competence in fintech market will vary depending on the investment style and process. High-frequency quant/systematic /automated trading relies exclusively on powerful computers to analyze data sources, detect patterns, and generate information at speeds that humans cannot match. Investor perceptions of companies can be enhanced by AI, which is an integral part of their management

354  Fintech and Cryptocurrency operations. AI is used by a growing number of third-party providers to analyze corporate risks in ESG problems including water pressure. AI can be used to collect data and to develop anonymous or unlimited data. Artificial intelligence (AI) has the power to fundamentally alter how businesses are organized. If not handled appropriately, it might cause significant environmental harm. Advantages of Artificial Intelligence A potent instrument that is widely used in financial services is artificial intelligence (AI). If businesses use it with enough diligence, creativity, and care, it has a great potential to have a beneficial impact. The use of AI in the financial services industry has various advantages. • It can improve firms’ efficiency through cost reduction • It helps in productivity enhancement; therefore, firms can achieve higher profitability via enhanced automated decision-making process and execution. • It minimizes errors caused by human’s psychological cues and emotional cues • It improves the quality as it has mass market potential which can arrayed across industry • Helps senior management to review and evaluate high quality data generated by a company. • It enables the multi-tasking activities and executes hitherto tasks in lower cost. • It can work endlessly (24x7) without breaks and faster than human. AI trading software can absorb a lot of data to learn about the world and predict financial markets. To understand trends around the world, they can use everything from books, tweets, news reports, financial data, salary numbers, and international monetary policy. High-frequency trading (HFT), which allows traders to place millions of orders and scan multiple markets in just seconds, respond to opportunities in ways that people simply cannot. Investment management firms rely on computers to make transactions for years. About 9% of all the funds, with a total of $ 197 billion under management, rely on large mathematical models created by data scientists. These types, on the other hand, remain stable, require individual involvement, and do not work well as the market changes. As a result, money is flowing more and more into virtual reality models that study large amounts of data and evolve over time. Automation,

Upsurge of Robo Advisors  355 efficiency, competitiveness, and ultimately savings are key features of bank chatbots. Conversational Robo-advisor: This service uses dialogue to learn about the risk characteristics of investors and then gives the best portfolio advice. Investment management firms have depended on computers to execute transactions for years. Around 9% of all funds, with a total of $197 billion under management, rely on huge statistical models created by data scientists. These models, on the other hand, are frequently stagnant, require human involvement, and perform poorly when the market changes. As a result, money is increasingly flowing towards actual artificial intelligence models that study enormous amounts of data and develop over time.

16.2 Chatbots AI and ML are becoming inevitable in many industries. One of the main applications of digital technologies are customer service and chat bots- the best example of such technology. Automation, efficiency, a competitive edge, and ultimately savings are the main drivers for chatbots in banking. Chatbots are AI powered interactive messaging device via chat interface [4].

16.2.1 Benefits of Using Chatbots in Banks With the advent of chatbots, the focus of bank has shifted from existing products to existing customers. Chat bots used in banking industry enhances productivity and the notable benefits are: • Being smart and enhances productivity of bank personnel as not all the customer’s problems requires the help of humans. • Benefited with personalized assistance and improves relationship with clients conveniently by advanced chat banks and mobile banks services. • Improved clients experience through growing personalized collaborations.by providing services according to individual customer’s needs. Further, it improves user’s interaction and reduces friction from non-affiliated banking channels. • It detects fraud, money laundering and systemic misconduct. • Database customer information, as chat banking improves by contacting every individual client. The banks can able to answer client’s complex questions with lower cost.

356  Fintech and Cryptocurrency • Reduced costs associated with maintaining and improving customer service standards, as business grows, and customer numbers increase • Improves work efficiency and increases job satisfaction of employees. The improved operating procedures allow customer service to get information sit on the phone with the help of chatbots and allows staffs to focus on high value/ important jobs • Make decisions that are more personal and more specific about who the relationship manager should be in contact with and what messages should be delivered. • Real-time customer service which simplifies the process of scrutiny of data and reduces human error in deducting frauds. • Improved storage and retrieval levels can be achieved through problem-solving process.

16.3 Robo-Advisor A robo-advisor is an automated platform that uses computer algorithms to manage financial portfolios and deliver financial planning services. A robo advisor is a type of AI based digital financial advisor helps in asset management without personal involvement. This AI based Advisors are developed and built to provide digital advice based on client’s investment goals and their risk tolerance level. Robo-advisors are digital forums that provide an automated, financial guide driven by an algorithm without human guidance. Robo-advisors are suitable for hand-free and novice investors. It is becoming popular because it is cost-effective, simple way of investing platform and avoids human professionals. A regular robo adviser takes an online interview to ask questions about client’s financial position and future aspirations/plan. Based on the collected information robo advisors provide recommendations and invest automatically. Robo-advisors are built to perform with minimal human involvement. Many robo advisers are used to perform basic financial services, relying on a simple basic question to determine investment behavior of the investors. There are many more common robo advisors in the market which includes automated investment and advisor, wealth management advisor and digitalized consulting forums etc. Regardless of the name, it all refers to fintech (investment technology) applications for investment management.

Upsurge of Robo Advisors  357

16.3.1 Robo-Adviser – A Brief History People around the world are crazy about superheroes, like superheroes, “financial superheroes” like robo-advisors have backstories. The automated wealth management and investing solutions are provided robo advisors which are used to make financial services. While bankers were strutting around Wall Street carrying beautiful leather briefcases and perfectly fitted jackets, 29-year-old Jon Stein had an idea and made the decision to take on Wall Street’s “wolves” with a cutting-edge new financial product. The story of Robo advisors can be traced back to 2005-2006, when the first financial technology company Mint, explored an automated financial management solution. 2008 was a difficult year for the financial sector. The collapse of the subprime mortgage market served as the primary trigger for the onset of the global financial crisis. Wall Street was swiftly destroyed by the domino effect. Even Lehman Brothers, a 169-year-old financial business that many believed was too big to fail, eventually declared bankrupt. While the investment firms were currently experiencing severe losses, a new financial trend was subtly developing. The idea of carefully controlling his fortune wasn’t something Jon usually agreed with. He opened seven different brokerage accounts, invested a lot of time and effort in tracking and timing the market, but ultimately unable to outperform his competitors who simply followed the market. The world is undoubtedly becoming more convenient and affordable, he reasoned, so why was investment moving in the opposite way, becoming ever more challenging? Why wasn’t there a financial agency that could have just advised him on where to put his money and then carried it out without any further action? With his roommate and other pals, Jon Stein signed a straightforward Betterment founding agreement in August 2008. Betterment was designed from the standpoint of improved customer experience, enhancing the customer’s operational convenience and overall user experience, with the goal of helping people live better lives utilizing a more convenient investing solution. A new “smart” investing option known as a robo-advisor entered the financial industry at this time. Betterment and Wealthfront, both established the words first Roboadvisors in late 2008 [5]. Jon Stein and Andy Rachleff and Dan Carroll, are considered the first quarterly consultants in the retail sector [6]. The first robo-advisory services emerged in Europe a few years later. It encouraged the creation of more robo advising platforms in 2009. Around the same period, pioneers like Betterment, Wealthfront, and Future Advisor

358  Fintech and Cryptocurrency debuted. Future Advisor was the first robo advisor in the world to connect directly to retirement accounts, and Betterment, which began as a cash and investing company before becoming the largest robo advisor in the world five years after its introduction. Robo advising platforms have been introduced all around the world over the years. With early adopters including Pintec Technology, China Merchants Bank, and CreditEase, China saw the launch of its first robo adviser in 2015. In the UK, Moneyfarm launched its wealth management platform in 2016. Niche robo advising platforms targeting specific investment demographics were later developed in North America; one such company is Ellevest, which is run by women.

16.3.2 Historic Account of Robo Advisors • In 2011 UK launched Nutmeg [7], • Quirion was launched in Germany in 2013 [8]. Surprisingly, Even if banks were not among the first beneficiaries, the beginnings of robo-advice may have been traced back to the initial origins or asset managers. Asset managers in particular, and robo advising services, present significant possibilities (Becchi et al. 2018). They can readily divert a portion of their client’s funds to digital advising services, lowering the entry hurdle for new clients. It shouldn’t be surprising that Vanguard, in terms of assets managed, owns the largest robo-consultant. The quarterly counseling’s principal objective was to undermine banks advising services by giving brokers and other clients access to reasonable financial guidance in order to help them make wise investment choices [9]. Today, we can see that, instead of underestimating financial institutions like banks, robo-advisory deals with them primarily. According to the institutional economy in the FinTech sector [10], investors are very cautious because of the difficulties of control and trust, such as behavioral risks. Despite the financial crisis, banks continue to be more profitable than startups. In addition, banks are trying to tackle the problem of new skepticism through mixed-use models that include people and robo advisors. Although the original business models were very simple, they focused on understanding customer risk and ETF-based stock advice and bond portfolio. Over time, counseling became more complex as new categories of assets, operating funds, tax improvements, and other factors were added. However, according to a 2018 survey, the investment process for quarterly advisers was straightforward at the time [10]. Investors were asked a few questions that were commonly used to assess risk preferences of their

Upsurge of Robo Advisors  359 interest towards investment, but this does not appear to be sufficient in classifying active risk to make the apt investment recommendations. In that view, we believe that the quarterly counseling industry is in its early stages, and that further growth is needed.

16.3.3 Robo-Advisor Versus FA (Financial Advisor) Table 16.1 provides the highlights of the basic difference between a human advisor and a robot advisor. Table 16.1  Robo advisors vs financial advisors. Feature

Financial advisor

Robo-advisor

Cost

It is combination of both percent of assets managed, hourly fee. It varies depending upon various firms/concern.

Basically, based on the Percentage of assets managed will be charged. It may vary from 0.25% to 10%.

Scope of service

FA provides range of financial services

Investors investing plan and based on their goal planning

Ease of signing up and maintenance

FA initially involves consultation, and then meetings over time. Usually it will have human touch.

It is very easy and quick to access via online. Further, it very adjustable at any time.

Excel in

FA is good for the task which requires a specialized expertise or unique task.

Automation makes investing easier for tedious and mundane tasks.

Superpower

The best financial advisors motivates the investors toward their financial objection and goal

It is specialised for tax-loss harvesting option.

16.3.4 Robo Advisors in Market Private robo-advisors have raised more than $1.32 billion worldwide since 2012 across 119 equity transactions. Robo-advisors are the largest subset of wealth technology businesses, receiving about 30% of all funding.

360  Fintech and Cryptocurrency Betterment, Personal Capital, and Wealthfront are three of the biggest robo-advisor companies in terms of total funding and among the first. Despite dominating in the US, they have obstacles to growth abroad because of a complex legal environment, varying investing patterns, and other entry-level restrictions. New early-stage robo-advisors have been launching in numerous markets and at least 17 other nations outside of the US because they have seen the business opportunity there. Automated investments cover a wide range of concepts, including high frequency trading, algorithm trading, autonomous asset management, and automated stock trading [11]. Robotic asset management and investment counselling are both on the rise as trends in the market. In the 1990s, the FinCEN Artificial Intelligence System (FAIS) was already in operation to anticipate potential money laundering. One of the first financial institutions to deploy chatbots, Ally Bank introduced Ally Assist in 2015 to allow the customers personal account management assistance. Ally Bank introduced Ally Assist in 2015 to give customers un-interrupted personal account management assistance. It allows the various customer services such as bill payments, money transfers, and queries regarding account information, which can comfortably access through the mobile app. RPA was first added to the Insurance Industry Data Repository in 2013 by Xchanging, a long-standing service provider in the insurance market in London. It had 13 automated processes in its insurance industry within two years. According to the company, this eliminated human mistake and cut down on application processing time by more than 90%. Erica is a new AI-powered financial assistant from Bank of America. By delivering notifications, providing balance details, saving advice, sharing credit report updates, paying off debts, and assisting consumers in making sensible financial decisions, this chatbot has successfully addressed the banking needs of its users. It also offers personalized and speedy transactions. Robo Advisor Global Share – A bird eye view: The trend toward becoming digital has virtually eliminated any room for the financial services business as well. The introduction of the RoboAdvisor Market was made possible by the market’s rapid digitalization and the adoption of cutting-edge technology, but it has also helped the sector maintain its place by acting as a major factor in driving up demand for the technology. Due to the service’s low cost and almost complete lack of human engagement, several major players have chosen to invest in it rather

Upsurge of Robo Advisors  361 than investing heavily in labour costs. The service has been able to meet customer demand digitally by providing a complete site of solutions and using algorithmic computations. Since 2012, 57 percent of the global deal share has gone to US-based robo-advisors. The UK scored second place with 9 percent, followed by China and Germany. Wacai, a Chinese robo-advisor and personal wealth management technology startup, received the two largest robo-advisor transactions outside of the US. A 50 million dollar Series B was raised by the firm in 4th quarter of 2014, and a $80M Series B-II was raised in 3rd quarter of 2015. With a $37.5M Series C in Q4 2016 and a $32M Series B in Q2 2014 that includes Armada Investment Group, Pentech Ventures, Balderton Capital, and other investors, UK-based Nutmeg closed the third and fourth largest deals [12] The Use of Digital Technology and Automation in Wealth Management are creating the Growth Opportunities for the Robo Advisory Market Globally [7, 11, 12]. Even though the industry is anticipated to expand during the forecasted period, a shortage of human knowledge at nearly all levels may function as a market restraint. The market’s expansion is anticipated to be constrained by security and compliance issues. Other constraints that can limit market growth include a lack of direct customer interaction or individualized support, rising risk profiles brought on by shifting variables like retirement and income, and an inability to adjust to shifting conditions in real time. However, the market has a chance thanks to the assistance of the government and unrealized potential in the developing market. The market is given a chance by the numerous technical developments, including the incorporation of AI into digital investing platforms. The Global Robo-Advisor Market is divided into following categories 1. Based on Geography, 2. Based on Services, and 3. Based on Automation Mode. Based on Geography it is divided into • • • •

North America; Asia Pacific; Europe and Rest of the world

Due to the presence of key market participants like Betterment and Vanguard there, North America is the top region in the robo-advisor

362  Fintech and Cryptocurrency business. The increasing robot advisory usage among investors is contributing to the region’s rising need for technology. Due to a rise in the acceptability of digital technology in the region, Asia-Pacific is expected to take the second position in the lead [12]. Based on the automation mode, the market is divided into • Fully Automated Robo-advisor financial services and • Semi-Automated Wealth management firms and investors employ both of these methods to obtain financial services, but completely automated is anticipated to rise over the projected period due to the financial services market’s rapid digitalization. Based on Service the market is divided into • • • •

Investment Advisor services Wealth Management services TAX-Loss Harvesting services Personal Finance Advisor services

All of the technologically enabled services are currently in use, but due to the market dominance of wealth management and investment advisors as well as the comprehensive and simple digital use of the service, tax loss harvesting, and personal financial advisors are expected to grow in the coming years. The market for robo advisory services is anticipated to expand as a result of product developments, corporate expansion, and acquisitions by major industry participants, as well as rising robo advisory acceptance for the convenience of using financial services. As user preference for traditional advisers continues to climb, users typically believe that human advisors are the best choice under volatile market conditions. At a robust CAGR of 39.9%, it is predicted that the global robo advice industry will generate $59,344.5 million between 2021 and 2028 [13], up from $4,600.0 million in 2020.The Asia-Pacific Robo advisory market is expected to show an increase of 41.7 % CAGR, bringing in $19,518.4 million, according to the geographical analysis of the market. Robo Advisory Market – Impact of COVID19 Investors understand the value of online services for investments thanks to the COVID-19 epidemic. Customers who once chose to visit a bank

Upsurge of Robo Advisors  363 branch, now prefer to speak with a humanoid advisor and are gradually changing their behaviour. This is because when governments decided to implement a lockdown, banks closed their relevant sections. Frequently, customers were spending more time on alternative services that may provide a satisfactory customer experience because they did not anticipate such a significant change. The COVID-19 had a favourable effect on the robo advisory business. Since the COVID-19 outbreak, there have been increasing global fears, which, when paired with the ongoing conflict over oil prices, have alarmed investors all around the world [12]. The majority of digital advisor-managed portfolios outperformed each other amid market fluctuations, according to backend benchmarking, which analyses performance by opening portfolios at top robo-advisors. The number of users on an online wealth management platform or robo advising in wealth management has doubled as the coronavirus forces more and more advisers into lockdown mode. According to wealth management businesses, advisers are spending time managing customers who have been negatively impacted by the coronavirus on a human and financial level. The way that robo-advisors communicate will differ slightly from how traditional advice firms do it. Through email, push notifications, and in-app notifications, they will need to rely on the digital collaboration tools at their disposal. Innovative solutions could help robo-advisors provide the human touch necessary to allay customers’ fears during trying times. These tools might include chat functionality or video conferences to communicate with a team of advisors. As examples of premium services, Betterment and Personal Capital already offer financial advisor access. Why Should You Go For a Robo-Advisor? A personal wealth advisor can be a great option if you need confirmation or personal discussion before investing. If a person wants personal advice or affirmation before making an investment, a financial advisor/counsellor may be their best choice. However, a Robo-advisor is the best option if he/ she desires for simple transactions and quick access. Even the paid robos have fairly affordable prices, with the typical charge ranging between 10 bps and 50 bps [14]. The extensive range of services, including investment tracking, make robos well worth the cost. They will undoubtedly shape wealth management in the future, one can reasonably anticipate. As they gain the confidence of financial investors, they will also notice an expanding user base. Understanding Robo-Advisors Betterment, the first advisor for the quarter, was established with the aim of evaluating the assets as per the

364  Fintech and Cryptocurrency client’s requirement. Its main aim is to serve an online interface to manage idle investments, purchases and hosting them. To expand its offers to customers, Betterment purchased Makara, a robo consultant platform that manufactures and manages bitcoin portfolios, in 2022. Since the early 2000s, human resource managers have been using automated portfolio distribution tools. However, before Betterment was introduced, they were the only ones who could afford the technology, so customers who wanted to benefit from this success had to hire a financial advisor.

16.3.5 How Robo-Advisors Work? A robo-responsibility advisor’s responsibility is to build customers’ investment portfolio and to manage them. Figure 16.1 shows the step by step working process of robo-advisor. Step 1: Creation of Account & Questionnaire: The first step in opening an account with a robo-advisor is to create a login. After that, a new client of a robo-advisor fills out an online questionnaire to provide their basic information, covers their financial objectives such as time frame, risk tolerance, and the amount of money that they wants to save.

Step 1

Step 2

Step 3

Step 4

Step 5

• Investors gives their goals, time and other related details • Proposal are analyzed across its portfolio to select appropriate product • Appropriate investment options are sent to investors over service channel • Investors can enquire and confirm about the investment option or reject the advise • Each clients order is processed by robo advisor in real time

Figure 16.1  Working process of robo advisor.

Upsurge of Robo Advisors  365 Step 2: Analysing the Proposals: The next step is an algorithm is applied by robo-advisors on such survey questionnaire. The answers provided by the client will assist the robo-advisor decide how to distribute their funds. A lot of robo-advisors adopt a strategy known as modern portfolio theory, or MPT. The proposals are analyzed to select appropriate product. Step 3: Appropriate Investment Option: After the analyzing stage, Roboadvisors will give an asset allocation strategy and assist the client/customer in creating diversified investment portfolio that will satisfies the clients investment objectives. Step 4: Confirmation/Rejection of the option: Once the receipt of robo-advisors option, client can either confirm about the investment option or they can reject the advice. If they reject, robo-advisor can further give another option based on their modified requirement. Step 5: Automated Rebalance of portfolio: Once the clients funds are invested, the robo-advisor will automatically update their portfolio to best fit with achieving your goals as market conditions change or as you invest additional money. The term “rebalancing” more accurately describes this periodic purchasing and selling. By doing this, it will be made sure to stay inside the desired allocation. The robo-advisor will thereafter maintain client’s target allocation using those contributions.

16.3.6 Types of Robo-Advisor Robo-advisors can be grouped in four different ways: according to their technological proficiency, revenue model, advisory segment and by its scope. a. Technical aptitude: There are two primary sorts of robo-advisors based on technical aptitudes • The simplistic Robo advisor and • the comprehensive robo advisors a.1.  Simplistic Robo-advisor: Basic/simplistic robo advisors create a portfolio using traditional profiling. A quick questionnaire is required to filled by investors in order to evaluate their risk tolerance. This basic information is assessed in light of the investor’s objective and goal while creating a portfolio. a.2. Comprehensive advisors: This type of advisors provide an in-depth understanding of investor profiles using artificial intelligence (AI) and data to predict investors behavior

366  Fintech and Cryptocurrency beyond the general risk profile questions. In this category, the data provides the robot with information about investors actual net worth, existing debts, spending habits, and behaviour in a variety of contexts, while the AI is always learning about investor and the best investments for their profile [15]. INDwealth, CUBE Wealth and Arthayantra are comprehensive advisors which uses ML to provide realtime personalised advice to the investors. b. Revenue source: Some robos receive fees or commission from the product owners and advisory fees from the investors for providing financial advice. Since its revenue may affect its suggestions, the former has a conflict of interest [11]. Because it does not rely on the manufacturer for its revenue, the latter is free from any such conflicts. As a result, it is exclusively loyal to customers. Thus, investors alone are the object of its loyalty. The advisory fee might be anything between 10 and 50 basis points [16], while a human advisor typically charges 100 basis points in commission. c. Advisor Segment based: Robo-advisors can also be categorised based on the range of tasks they are capable of performing. Based on the robot advisory segments, it is grouped as automated fund base advisor, equity based advisor and scope based advisor. c.1.Fund-based robo advisor offer recommendations to clients based on their risk and financial goals. Investments can only be made in funds (not in other assets). The commission will be charged based on fund distribution and it is the principal source of income for these consultants, who hardly ever charge their clients. They are perfect for inexperienced and novice investors who want guidance on how to assemble their portfolios but don’t want to trade equities themselves. A few examples of these type of advisors are Scripbox, Kuvera and Fisdom. c.2.Equity based advisors: Equity-based “Robo advisors” platforms primarily focus on stocks portfolios. Through a variety of brokers, they provide fund execution. They also provide a portfolio mix for investments based on a particular industry or investment approach. Smallcase, Marketmojo are famous equity based advisors. These platforms frequently levy a predetermined fee for each transaction or on an annual basis. Investors that have a rudimentary understanding of the equities market and are prepared to take on moderate

Upsurge of Robo Advisors  367 to high levels of risk in order to maximise their portfolios should seek out these advisers. Tauro Wealth, Marketmojo, and Smallcase are well-known equity-based Robo advisors. d. Scope Based advisors: Robo advisors can be grouped based on the many tasks that they perform. The majority of robot advisors in India today only provide guidance on investment trusts, while other robot advisors do so for a variety of financial instruments and assets. The majority of robo consultants build portable portfolios for their clients using contemporary portfolio theory (or another approach). Robo Advisors use a measuring band for this. There is a precise weight assigned to each category of commodities or each individual security, together with the accompanying tolerance. The obligation to hold 30% of developing market shares, 30% of strong domestic shares, 40% of government bonds, and a corridor of 5% of each asset, for instance, could be part of a distribution strategy. This kind of redesign was formerly controversial due to its time commitment and potential cost-effectiveness.

16.3.7 Top Robo-Advisors Specialized top robot advisors are listed in the following Table 16.2. Table 16.2  Specialized top robo advisors. Good In

Robo-advisor

Access to financial advisor

Betterment

Saving plans

Wealthfront

Minimum investment of $2000

SigFig

Beginners in investment

Ally

Low fees

Charles Schwab

Goal driven investment

Ellevest

Banking features and automated investment

TD Ameritrade

CFP access and fee free investment

SoFi

Best retirement planning

Fidelity

Socially responsible investment

Wealthsimple

Minibites of leading Robo advisors: Betterment: It is an online based investment company, launched in 2008 and Betterment Everyday was launched in 2019. This was apt for customers

368  Fintech and Cryptocurrency cash management option and provided services like checking and providing savings account options. Betterment aimed to become the preferred personal finance manager by having no account minimum and a 0.25 percent annual fee [17]. Wealthfront: Betterment and Wealthfront are the equally competitive leading robo-advisors in this industry. In 2018, Wealthfront made history by becoming the first robo-advisor to provide free, individualised financial planning to its consumers. Wealthfront does not, however, provide access to human financial counsellors for aid with regards to investing, in contrast to Betterment. Although better than the Betterment’s $0 minimum amount, Wealthfront has a comparatively low $500 account minimum and a similarly low 0.25 percent yearly advising charge. This is best for the people who require access to human financial counsellors but yet desire inexpensive costs and a savings plan [18]. SigFig: It’s a robo investing service provider called SigFig which combines financial advisors with money management software. The product from SigFig has several tiers, making it ideal for novice investors. Customers’ complete investment portfolio is gathered in one location through its free portfolio tracker, which has no minimum investment requirement. Compared to Betterment and Wealthfront, it requires a minimum investment amount of $2,000 and with a lesser yearly charges of 0.25 percent. Further it covers, tax loss harvesting, rebalancing of customer’s portfolios, and live adviser chat etc. as its features. This is the best robo advisor those who seek human advisor with minimum account balance of 2000$. Charles Schwab: Charles Schwab Intelligent Portfolios, a leading robo-​ advising rival, excels in providing clients with a personalised financial plans. Investors are asked to submit a form in which they identify their personal objectives and risk tolerance. Schwab Intelligent Portfolios provides no management or account fees with a $5,000 minimum balance; nevertheless, consumers must pay expense ratios based on investments, which are typically still less expensive than the other competing roboadvisor’s fees. This is suitable for people who seek customized robo advice with low fees. Ellevest: Ellevest is a robo adviser service provider targeted specially for female investors, however it accepts users of any gender. Ellevest began its operations in 2017, succeeded by attempting to reduce gender differences in wealth. Each client’s gender-specific needs are taken into account while calculating financial objective and targets using a proprietary algorithm, and best for goal-based investment seekers with low fees which does not

Upsurge of Robo Advisors  369 expect minimum balance. Its monthly fees ranges between 1 to 9$ for their services. Ally: One of the cheapest robo-advising solutions is “Ally Invest Managed Portfolios”. It has a $100 minimum investment requirement and an average portfolio expense ratio of 0.7%. The service does not impose advisory fees, rebalancing fees or rebalancing investment fee, but it does mandate that clients retain at least 30% of their portfolios in interest-earning cash. This is the best robo advisors for the beginners. TD Ameritrade: On October 6, 2020, Charles Schwab acquired TD Ameritrade, although the brokerage intends to carry on as usual for the time being. With its extensive range of offerings, including its Web Platform for all investing levels and the think or swim platform for sophisticated traders, TD Ameritrade appeals to both experienced investors and beginners. The best option for people who desire a variety of apps for different trading skill levels and objectives. TD Ameritrade offers a $0 account minimum, whereas Essential Portfolios have a $500 minimum (the entry-level robo-advisor option). Additionally, it provides no-cost per-leg options, ETFs, and stock trading commissions in the US. There is a $0.65 per contract cost for option trading [18]. SoFi: SoFi was launched in 2011 as a platform for student loans, SoFi has since then grown to provide personal loans, home loans, wealth management services, and administration of personal finances designed to attract young investors. SoFi charges no fees and have a $1 minimum account balance because it targets youngsters, fee-conscious customers. This is the best robo advisors for the youngsters with low fees and certified financial planners who can access it for free of cost. Fidelity: Fidelity provides clients with services ranging from sound investment tools to financial planning and guidance. Its client assets total $7.6 trillion and 30 million unique clients. With a $10 account minimum, $0 in commission transactions, and $0 in fees, Fidelity is a top robo advising rival. Fidelity Go, the company’s robo-advisor, only allows customers to invest in Fidelity Flex mutual funds. This is best for the clients who don’t mind on limited investment option with low access fees and provides best retirement plans for their clients. Wealthsimple: Wealthsimple is a relatively young participant in the robo-advice business; it first debuted in Canada in 2014 before expanding to the US in 2017. With the support of a group of financial professionals, Wealthsimple provides a socially conscious investment choice. Wealthsimple is gaining popularity among investors who value putting their investments here due to its $0 account minimum and 0.5 percent cost

370  Fintech and Cryptocurrency structure for balances up to $99,999. Wealthsimple is the greatest choice for investors interested in socially conscious investment solutions. Highlight of Robo Advisors in India: • HDFC introduced its AI banking chat bot services named Electronic Virtual Assistant-EVA, designed to provide faster services such as information about branch addresses, IFSC codes of different branches, interest rates of various loan rates based on customer questions are offered by EVA. The bot has spread across many forums, including Google Assistant and Alexa. • In 2017, the State Bank of India (SBI) launched SBI Intelligent Assistant (SIA), an AI-based financial chatbot that can answer millions of inquiries per day about various information such as house loan, education loan, vehicle loan, and personal loans. Google answers roughly 25% of inquiries, while the SIA can process up to 10k searches per second. This chatbot is multilinguistic and can answer or text in 14 different languages. • Yes Bank’s AI based Chatbot – YES ROBOT was introduced in 2018. Customers can execute financial and non-financial needs using YES ROBOT without having to slog through numerous online pages. Further, they can manage their debit and credit cards through this AI enhanced chatbots and they can view their account summaries, pay bills, get rewards, and use their cards internationally. • Two robots from Hang Seng Bank in Hong Kong, Haro and Dori, are able to talk in Chinese and English, comprehend Cantonese, and blend English and Chinese. They sell rapid solutions to a range of demands to consumers. Omni also engages with consumers on the bank’s website, mobile app, and WhatsApp and replies to inquiries about real estate, personal loans, credit cards, health insurance, and travel insurance services. HARO is an acronym for “Help; Note; It Responds.” • Customers can find offers and restaurants with the aid of DORI (‘Food; Donations; Prizes; Interactive,’ available on Facebook Messenger). • Indus Assist is an AI enabled chatbot developed by IndusInd Bank in collaboration with Amazon’s Alexa, was introduced

Upsurge of Robo Advisors  371 in 2018. This enables customers to access banking services by simply speaking to Alexa. Customers can use voice-based chatbot to carry out their financial and non-financial banking tasks on various voice assistants such as Amazon Echo, Siri, and Alexa etc.

16.3.8 Points to be Consider while Selection of Robo-Advisor The following factors need to be taken into account when an investor wishes to invest and manage their account with the aid of a robo advisor. Goal setting: Investors should think about their goals before reviewing robo advisors. Some people may just need advice on selecting investments for a portfolio with only one goal in mind, while others may be saving for several goals. Once investors know what they want, they can decide if it’s enough to own one investment model that has a set asset allocation and automatically rebalances to take advantage of portfolio efficiencies like taxloss harvesting and automatic investment, or if they need a little more help to save for multiple goals at once. Facilitate goal planning: Robo advisors should offer tools and advice for investors to learn about their risk tolerance and what they need to reach their short- and long-term goals. In addition to risk tolerance, investors need to take into consideration their time horizon and how long they have to reach those goals. Investors should also find out how customized the portfolio will fit their goals and time horizon. Understand the fees and minimum investments: Robo advisory costs and minimum investment levels vary by platform and service. Some don’t require a minimum amount to open an account, with annual account fees as low as 0.25%, which means $25 for every $10,000 invested annually. Those account fees are on top of the fees for the mutual funds and exchange-traded funds. Investors who don’t need much human support and just want a small amount of smart portfolio management should look for the lowest management fee. People who want a mid-level service such as access to phone representatives or live chats may need to pay more for that option or have larger minimum balances. Check the ease of access: “How well does the design appeal to you? How easy is it to use? Investors should look at what type of calculators and educational information is available. They should also see if the robo advisor offers other financial services such as savings or banking capabilities. Make sure goals are well integrated: For people who are saving for more than one goal, make sure all those goals are integrated. Many people with long-term goals may have plans to save for their children’s college education

372  Fintech and Cryptocurrency and retirement. Investors should look for a service that helps them allocate their savings across these two goals, and they should get specific dollar recommendations of how much to be saving. Dive into the offerings: To keep expenses down, robo advisors generally offer low-cost, index-based mutual funds and ETFs. But, investors should look beyond simple portfolio construction and understand the type of mutual funds and ETFs offered. What are those investments? Are they proprietary funds? Or are they third-party funds? Some offer in-house investment funds and some offer funds from several different issuers to create their model portfolios. The platform should explain how they perform due diligence when selecting funds for their different asset allocation models. Know when a robo advisor isn’t right: Robo advisors can help people with small amounts of money automatically invest in equities or fixed income, but there could be even cheaper options available. Depending on costs or investment minimums, it may make more sense to open a diversified mutual fund when an investor only has a small dollar to invest. “Robo advisors came about to facilitate investing in small dollar amounts because the mutual fund industry didn’t do a great job of accommodating that,” he says. “Now that option exists in the mutual fund world.” One example is Fidelity Investment’s line of zero-expense mutual funds, which have no account minimums, with no account fees.

16.3.9

Benefits of Robo-Advisors

An investor can access where he is going with any device to monitor his portfolio and adjust his financial goals in the app as life gives them changes. While the idea of using an automated system to manage their investment portfolio may seem unattractive to some investors, for many it may be a good option for a few reasons. Easy to access: The robo consultant can be accessed easily if there is an internet connection. Many robos are intended to straighten. But what makes them more affordable than the standard advisor for managing human resources is that money is low. Neutrality: It is an AI-based consultant, which uses a mathematical algorithm for appraising an investor. This makes it impartial. Comprehensive services: Today robo advisors offer a range of services that include services such as retirement planning, tax strategic schemes and portfolio re-evaluation. A quarter can manage a portfolio and reduce any debts in one place. Tracking investment priorities: A quarterly advisor builds the investment goals based on investor’s profile. Once a quarterly advisor account is

Upsurge of Robo Advisors  373 created, it will continue to inspire responsible decision-making that is very critical in the future. For example, priorities such as life insurance are or long-term goals such as retirement planning are often overlooked by new investors. Robo Advisors like Paytm Money, Scripbox, and Indwealth have got a built-in mechanism that helps in tracking those goals with timely reminders. Low cost: The main benefit of robo consultants is that they are cheaper option than the traditional consultants. By eliminating human performance, online forums provide equally costly services. Most quarterly advisers charge a flat annual fee of .5% per certificate compared to the standard 1% to 2% rate demanded by a personal financial adviser. Efficiency: Efficiency is one of the key benefits that these Internet platforms have. For example, if anyone wants to do commercial work, he needs to meet a financial adviser, explain his requirements and then wait for it to do his job. Now, all that can be done by pressing a few buttons inside the comfort of your home. Automated rebalance: The majority of robo-advisors rebalance customer portfolio automatically to prevent it from straying from their desired asset allocation. For an example, a investors desires asset allocation of 90% equities and 10% bonds. If stocks have a horrible year, investors portfolio will end the year with an allocation of 85% equities and 15% bonds. Roboadvisor adjusts their portfolio as a result, selling some bonds and buying more stocks. Emotion free investment in decisions: Emotional investing is one reason why the average person’s investments underperform the market. Instead of adopting the long perspective, they respond to recent market movements. They become more open to the concept of investing once the market has increased for a while since it appears “safe.” It is frequently at that point, when it is overinflated and primed for a market correction, that it is least safe. Similar to when stocks decline, investors become fearful and sell. As a result, a vicious cycle of buying high and selling low is created, causing novice investors to lose money on stocks instead of making it. That’s not what robots do. Instead of being driven by fear, greed, or hunches, they invest according to reasonable, long-term investing principles.

16.3.10 Limitations of Robo-Advisors • One of the most important problems for robo consultants is their unequal level. While some use advanced AI and machine learning for creating portfolios of style, most robots in the market still prefer simpler methods.

374  Fintech and Cryptocurrency • Lack of Robo advisors on human interference can also be an obstacle. • High-value people with a large portfolios or those who want to take a large portion of their savings account find it less favourable. Such investors may seem to be convinced of people’s advice, especially when markets are volatile • They do not provide educational services and are less likely to teach the basics of investment and financial planning. Can Robo Advisor replace Human? It is impossible in the immediate future. The aim of the robo advisors is to provide resources to the previously neglected market segment and to increase the work for the human advisers. The main benefit of robo advisors is that businesses can now provide professional investment management services to investors at a fraction of the cost they would have previously done. Previously, investors would pay a consultant at least 1% of their total assets under management to manage their portfolio, but now, a quarterly adviser can do it for free or less than 0.25 percent each year. Because of the low cost and the opportunity to start with a small initial balance, investment opportunities are now available in a wide range of clients, allowing businesses to offer more attractive options to benefit their business. Companies can also use robo consultants to help their human counselors work more effectively. Applying artificial intelligence to automate basic management or monitoring tasks can free up time for counselors to focus on high-value work. Another advantage of using a learning machine to evaluate large amounts of financial data is that it can expose opportunities that human advisers may not have considered, especially when market conditions change rapidly.

16.4 Acceptance of Robo-Advisor 16.4.1 Theoretical Background and Research Propositions According to relationship marketing paradigms and social exchange theory, the main elements of collaboration are trust, perceived risk, psychological response, and visual application. Particularly in the context of e-commerce, buyers and sellers. Robo-advisors eliminate the role of sellers because they are only used by clients [19]. A digital investment advising tool based on financial product preferences is what Robo Advisor is all about. The absence of direct communication between the consultant

Upsurge of Robo Advisors  375 and the client is a key characteristic of Robo Consultants, it should be underlined. Perceived Risk: It is defined as the investor’s direct belief and fear of loss of the desired result. In this e-world,visual risk is considered as an important driver of consumer’s intention to accept an technology [20]. Visual usage: According to the social exchange theory, “thoughtful usage” is a useful explanation for why customers choose to contact with people or stop doing so. The buyer assessed the usefulness of the transaction in comparison to a standard that indicates a person’s cost-benefit ratio. The definition of “perceived gain” in the context of technology use is the belief that the application of new technology enhances or enhances performance [21]. The extent of consumer belief that employing robo-­advisors enhances performance, productivity, and yields investment advice is referred to as approval in the context of robo-advisors. Trust: “Trust is the loyalty of the trade partner” this is the definition of trust [22]. It is regarded crucial for developing a successful connection. Barter arrangements that could be more expensive than they might be worth are avoided. Due to the distance and lack of control customers frequently perceive greater risk online than in traditional shopping areas [23]. As a result, customers’ initial form of e-commerce engagement is trust [24].

16.4.2 A Glimpse of Earlier Research Studies An experimental research was conducted by Jung [25] to evaluate the needs of a robo-advisor from the viewpoint of the investors, it was discovered that the dimension of trustworthiness had a significant impact on how consumers with little experience, a tight budget, and low risk tolerance felt about the robo-advisors. In a study conducted by a researcher [26], which considered 171 students of German University, were given the choice between four investment management services and the sum of 5000 euros; a human advisor, hybrid robo-advisor service [27], completely automated robo-advisor or a delegated human advisor. The researcher found that behavioural intention could be significantly predicted by anticipating performance and perceived risk. The employment of automated robo advisor services showed performance expectancy which ended up with rise in behavioural intention. Through the perspective of the UTAUT acceptance model, a research was conducted by [28], which evaluated the uptake of robo-advisors. The study also showed a positive impact of social influence, perceived advantage and perceive trust on the intention to use robo advisors for investment

376  Fintech and Cryptocurrency management. Similar research was done by [29] using the extended TAM model as the foundation and familiarity and subjective norm were considered as additional variables. The result of the research proved that PE and PEOU were predictors of attitude towards customer intention to use the new technology called robo-advisor.

16.4.3 Methodology and Hypothesis Taking into UTAUT [30] model as baseline, research was conducted to examine, the customer’s behavioral intention to accept the emerging technology of robo-advisors. The UTAUT model was built around important predictors are performance expectancy of robo advisor, effort expectancy, trustworthiness, social influence, financial literacy, facilitating factors and tenancy to rely on them. A conceptual framework was developed to find out the predictors which will be influencing customers’ decision to use robo-advisors. Performance expectancy of robo advisor: It refers to the extent to which the customers believes the robo advisor’s performance, hence they can extend their usage of the application. The current research, examines the willingness of the investors and intention to adopt robo advisor if it depends on the performance of robo advisors financial management [31]. H1: Performance expectancy has an impact on investors acceptance of robo advisors Effort expectancy: The belief about the particular technology involves little to no effort is known as effort expectation [20]. The degree to which customers believe using robo-advisors is simple, easy, and pleasant may influence their behavioural intention to accept them. H2: Effort expectancy has an impact on investors acceptance of robo advisors Social influence: People at the time of taking decision whether to use a technology, often rely on the opinions of others. This is known as social influence [32]. H3: Social influence has an impact on investors acceptance of robo advisors Facilitating conditions: The term “facilitating conditions” refers to perceived environmental facilitators or barriers on ease of usage or difficulty of carrying out an activity [31]. H4: Facilitating condition has an impact on investor’s acceptance of robo advisors Trust: In general, it has been demonstrated that consumer’s desire to embrace modern technology, such as new payment systems, is driven by trust. Users intention to use robo advisor are trust worthy. Emotional unbiased decision by robo advisor can increase clients trust [28].

Upsurge of Robo Advisors  377 H5: Trust has an impact on investors acceptance of robo advisors Perceived Financial Literacy: The self-assessed and perceived financial knowledge of the customer is referred to as financial knowledge [33]. H6: Perceived Financial knowledge has an impact on investors acceptance of robo advisors Tendency to Relay on technology: A important predictor of the adoption of robo-advisors may be consumers’ propensity to rely on them rather than human advisors [31]. H7: Tendency to relay has an impact on investors acceptance of robo advisors. A conceptual framework was developed to find out the intention to accept robo-advisors, and hypotheses H1 to H7 were plotted in the following Figure 16.2. Performance expectancy

H1

Effort expectancy

H2

Social Influence

H3

Facilitating Condition (Ease of use)

H4

Trust

Intention to accept Robo-adviser

H5 H6

Perceived financial knowledge H7 Tendency to relay

Figure 16.2  Conceptual framework & hypotheses.

16.4.4 Collection of Data The survey data were collected from various respondents globally to measure the intention of investors towards robo advisors. In this regards, questionnaires were distributed to respondents were between the age group of 18-50 years. Further the respondents must possessed an investment portfolio. 150 respondents were considered for this study to know their intention to accept robo advisors.

16.4.5 Hypotheses Testing SEM is used to find out how components are linked using multiple regression techniques. Multiple regression tests are a statistical method in which

378  Fintech and Cryptocurrency more than one independent variable may be analysed to predict a single dependent variable. It may also illustrate how a collection of independent factors explain a share of the variation at a significant level in a dependent variable. The model fit indices of the proposed model are Chi-Square data is 351.045 with 154 degrees of freedom and os 2/df is 2.21 which shows an adequate fit. The GFI (Goodness of Fit Index) achieved is 0.930, while the AGFI (Goodness of Fit Adjusted Index) is 0.912, above the required 0.90. The CFI and NFI (Normal Fit index) values computed are more than 0.90, indicating that the model fits perfectly with the data. It was discovered that RMSEA is 0.038, which is lower than 0.08, and that it confirms the model fit. SEM is used to find out how components are linked using multiple regression techniques. Multiple regression tests are a statistical method in which more than one independent variable may be analysed to predict a single dependent variable. It may also illustrate how a collection of independent factors explain a share of the variation at a significant level in a dependent variable. The Table 16.3 illustrated the different weights of regression of independent variables. Table 16.3  Testing results - regression weights. Hypothesis

p-value

Significance

H1

.57

.002

H2

.53

.021

H3

.28

.010

H4

.28

.022

H5

.58

.016

H6

.22

.042

H7

.36

.030

The Regression estimates and their significance for the entire path are calculated. It shows the amount of the change in dependent variable for one unit change in the independent variable. The relative contribution of each predictor variable to each dependent variable is given by the standardized estimates in the above table. The result of the model demonstrates that the behavioral desire to use financial robo-advisors is positively and significantly connected to performance expectancy. Similar to this is a favorable and statistically significant correlation between social impact and the investor’s inclination to use the automated financial robo-advisors. The intention to accept the robo-advisors is correlated with investor’s trust

Upsurge of Robo Advisors  379 in them. Additionally, a greater correlation has been shown between perceived financial literacy/knowledge and robo-advisor usage. By implementing this advising service, investors who consider themselves to be financial literate/savvy choose to get guidance from robo-advisors. The findings also indicate that there is a behavioral desire to use financial robo-advisors that increases with the tendency to rely on this new technology based robo-advisors. The adoption of these robo-advisors are found to be affected by effort expectancy and facilitative conditions also. Investor’s behavioral intention to use automated robo-advisors is significantly influenced by all the predictors.

16.5 Conclusion Due to technological improvements in this day and age, a variety of portfolio management platforms now present the idea of the Robo-advisor as the most cutting-edge investment advisor available today. With the aid of a Robo-advisor, investors can easily manage their investment portfolio; it will help them to choose worthwhile investment possibilities depending on the risk tolerance and implementing a methodical approach. Even though Robo-advisor will manage investor’s investments and provide them with services that have risk-adjusted returns. Investors will still need to improve their financial literacy in order to understand the advice given by the Robo-advisor and in turn, make wise financial decisions.

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17 Super Apps: The Natural Progression in Fin-Tech Kavitha D.*, Uma Maheswari B. and Sujatha R. PSG Institute of Management, PSG College of Technology, Coimbatore, Tamil Nadu, India

Abstract

Super Apps refer to an ecosystem that includes within itself a full suite of solutions such as banking, marketplace, and lifestyle services to satisfy various needs of a user. They provide a seamless and integrated experience and save them from switching between multiple individual apps. The market space for Super Apps is highly competitive, with fin-tech giants, banking companies, and big tech rivalling each other to acquire and retain consumers. The concept of a “Super App” seems to be a natural progression from the various offerings of the fin-tech sector. This chapter provides insights into the evolution of the concept of Super Apps, the market, key players, their business models, and their role in financial inclusion. The chapter also details the risks inherent to Super Apps and the measures to mitigate the same. Keywords:  Super app, mobile application, Fin-tech, financial inclusion, consolidation, banks, financial services

17.1 Introduction A “super app” refers to a “cluster of applications” that are contained within a single dedicated app. It refers to an ecosystem that includes a full suite of solutions such as banking, e-commerce, and lifestyle services to satisfy the various needs of a user on one single platform [8]. It serves as a one-stop solution for users and reduces the effort required to accomplish multiple tasks *Corresponding author: [email protected] Mohd Naved, V. Ajantha Devi, and Aditya Kumar Gupta (eds.) Fintech and Cryptocurrency, (383–412) © 2023 Scrivener Publishing LLC

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384  Fintech and Cryptocurrency that users want to perform online [15]. They provide a seamless and integrated experience and save users from downloading and switching between multiple individual apps. Though the term “Super App” was coined by Mike Lazaridis, the founder of BlackBerry, in 2010, the increased momentum is rather recent, after the Chinese single-use app “WeChat” expanded its offering to become a “Super App”. The growth of the platform-based industry has been driven largely by the rapid growth in the usage of mobile phones, more specifically smart phones, across the world. A survey by Deloitte reported that all developed countries had a mobile penetration of at least 90%, with developing countries following very closely. As in 2021, according to Statista, there were about 15 billion mobile devices used worldwide, with a smart phone penetration rate of 78% and about 6 billion smart phone subscriptions. The proliferation of mobile apps into our everyday lives has resulted in a greater need for solutions via the digital mode. This increasing reliance on digital solutions has led to the creation of numerous apps that satisfy various needs of users. From basic services such as hailing a ride to banking and payment solutions, apps seem to exist for every need of a user. Besides the applications provided by the mobile device, downloads from popular sources such as Google Play or the Apple App Store have risen to astounding levels. The onset of the pandemic has further accelerated the pace of digitization. It can be said that there is no industry now that does not have a digital presence. Super Apps have become an indispensable part of the lives of people in most of the countries in the east, and these entities are gaining prominence as a way of life in most of the emerging economies. However, in the western world, super apps have not yet become as popular as in the east. The slow growth is attributed to the change in customer preferences during the last decade towards fragmentation and unbundling of products and services rather than bundling. The stringent data privacy policies and the cautiousness of users have also been reasons for the slow-paced growth. The concept of using a single homogenous user base to drive growth in multiple verticals is the basic ideology behind the Super App. As a business model, the Super Apps have gained popularity and have attracted huge investments from funders. Individual investors are, however, very sceptical about the business model as the long-term prospects of such investments are not very clear. The success of the early entrants into the industry has forced many players to follow suit. However, as the heterogeneity of the business model results in a defocus of businesses on their core offerings, which may disrupt strength in core verticals. In the banking and financial services industry, Super Apps have disrupted traditional banking services offered by banks and financial institutions. Though the innovative products from the fin-tech

Super Apps: The Natural Progression in Fin-Tech  385 and technology giants have resulted in improving financial inclusion across the world, the flip side is, however, the creation of a monopoly due to the large user base available to the technology giants and the inherent dangers and instability that are imminent from such consolidation.

17.2 Journey from an App to a Super App The journey to the making of a Super App requires a single-purpose app that has a strong presence and is scalable. All the major super apps in existence began their presence as single-purpose apps. This basic service offered through the app should have the potential to draw a large user base and be scalable. However, this might not be possible for all apps. In most cases, retention and revenue generation, two key factors that determine the success of an app, may not be achievable. In some cases, the user base may be present but without adequate revenue generation. In other cases, the revenue model may be clear but with a smaller user base. In such cases, there is a necessity for the app service provider to launch other apps that complement the existing service and ensure sustainability. For example, adding an e-commerce platform or payment wallet may be a natural extension for a messaging app. This imminent need to retain users and ensure adequate revenue generation has prompted several app service providers to offer solutions for multiple user needs. The next logical step would be to identify specific requirements of users and bundle existing services to create new ones or to launch new services. Initially, these extensions are restricted to the other service or product offerings of the company. Once the company has a significant user base that can be used for personalised offerings, the process then becomes a virtual loop with more user needs identified, resulting in the addition of many more apps. As many companies may not have the required competence to develop and launch apps for all the user requirements, the most feasible strategy for expansion will be through the integration of third-party apps. These third-party apps help in adding diversified services for the users. The virtual cycle then continues, resulting in the app moving from just being an app to an ecosystem of numerous mini apps to serve user needs, obtaining the status of a “Super App”. Super apps are therefore a natural progression from single-solution apps (Figure 17.1).

17.3 Super App vs. A Vertically Integrated App The key dissimilarity between a vertically integrated app and a super app is that the latter offers numerous unrelated services offered either by it or

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Scalable Single Purpose App

Integration of Apps of the Service Provider Integration with Thirdparty Apps to widen service offering

Super App

Figure 17.1  The journey from an App to a Super App.

by third-party providers. Though the services may be bundled together for better usability, they are, in most cases, diverse and unrelated. A vertically integrated app also has multiple service offerings, but all the services are related and from the same vertical. For example, Monzo offers a variety of apps for various purposes, but all of them fall into the banking/financial services sector. A Super App provides the experience of a mall, but the vertically integrated app is an easy-to-use option or as a solution for those customers who prefer a mobile app rather than internet banking. Most of the neo-banking apps also fall into this category. The basic intention is for the company to ensure that its services are available on a mobile platform. In most cases, the journey to Super App status goes through the vertically integrated app route.

17.4 Architecture and Design of Super Apps The architecture of a Super App lays the foundation for its future developments and enhancements. It encompasses the set of techniques, patterns, and interfaces that are essential to building a fully functional system. It should be designed with a long-term perspective as it will influence the basic structure, size, and scalability of the app. The cost of operating and maintaining

Super Apps: The Natural Progression in Fin-Tech  387 the Super App is also dependent on the architecture. Irrespective of the type of architecture chosen to develop the Super app, the following are some of the features that are essential for an app to be successful: testability, reliability, scalability, ease of navigation, compatibility with mobile devices, performance in the expected bandwidth and time taken for development. The mobile app architecture typically consists of three tiers: the presentation layer, the business layer, and the data layer (Figure 17.2). Presentation Layer: This layer, also known as the user interface, is the periphery of the Super App and what is evident to the user. It consists of both the user interface (UI) and the user experience (UX). The themes to be used, fonts, colour, placement etc., form the UI. The UX determines how the user feels when interacting with the app. Hence, appropriate insights into the needs and preferences of the target user segment are essential to create a relevant UX. Business Logic Layer: Also known as the application layer, the logic, workflow, and entities for processing client requests are encompassed in this layer. The rules for data exchange, security, data caching, authentication, exception management, and data validation are defined in this layer. The structure of this layer determines the functional efficiency and the resources required for the app. This is the most complex layer of the app. Data Layer: This layer facilitates data transactions in the app and is crucial as it helps to meet the requirements of the app. It consists of the data utilities, access components, and service agents. The data format to be used should be carefully chosen as it determines the ease with which it can be maintained and rescaled overtime to meet changing business needs. As Super Apps are mobile-based, the compatibility of the app with various mobile devices is crucial and should be borne in mind during the development phase. The layout of the various services provided through User Layer/ Presentation Layer Business Logic Layer Data Layer

Database

Figure 17.2  Layers in an App.

388  Fintech and Cryptocurrency the app and the way in which they are connected, deployed, maintained, and updated is determined based on the architecture used. The following are some of the architectures adopted by leading Super Apps.

17.4.1 Monolithic Architecture In this kind of app, the functionality is contained within a single process/ container which contains several different components combined into a single process. For example, Grab follows this architecture. All the constituent modules are self-contained into one large application and are tightly coupled and interconnected with each other (Figure 17.3). The entire application functions as one large, indivisible unit. The flipside of monolithic architecture is that if there is a need to update one module, it may be difficult and resource-intensive. Also, problems in one component may cause the entire application to become dysfunctional. 

17.4.2 Modular Architecture In this type of architecture, the application is broken down into loosely coupled, smaller functional units to enable functional independence (Figure 17.4). Each module has its own process independence and performs a specific task, but can be easily linked together with other modules to form a larger application. The major advantage that this type of architecture has over a monolith is that one or more independent modules can be combined or reused to create another module based on user requirements. This helps to reduce development costs significantly, especially when

Wealth Manager

Movies Application User Interface

Database Book Your Ride

Bank

Figure 17.3  Monolithic architecture.

Super Apps: The Natural Progression in Fin-Tech  389 Module 4 Module 1 Module 5 Module 2 Module 6

Module 3

The App

Module 7

Figure 17.4  Modular architecture.

improvements are required to fulfil user expectations. Also, the modularization makes improvement and maintenance quick and less expensive. 

17.4.3 Microservices Architecture This is a service-oriented architecture in which a single application comprised of a set of small modules is developed (Figure 17.5). However, each of the constituents is a separate monolith of its own and has developed as an independent operating entity. As these modules are individual entities, they are smaller in size and easier to update based on changing user requirements. Also, updates or issues in one module will not cause problems in the remaining modules. The major benefit of the microservices architecture is that each of the modules can be developed using a different technology that will be appropriate for that particular service. This also decreases the boot-up time and memory usage of the app, making it faster.

Database

Database

Database

Database

Wealth Manager

Movies API Gateway Book Your Ride

Bank

Figure 17.5  Microservices architecture.

Application

390  Fintech and Cryptocurrency The scalability of these apps developed using this architecture is comparatively easier, especially when the app has a very large user base. In terms of development costs, microservices are expensive as they require multiple teams to develop the individual services and deploy them.  The development of the app should be started only after a decision on the nature of the architecture to be used has been made. The time taken for the development of the app is also based on the nature of the architecture to be used. As the implications of the decision are long term and involve significant cost, time, and resources, considerable care and attention should be paid before a final decision is made.

17.5 Business Models of Super Apps Super Apps are based on ‘Digital Business Models.” A digital business model is one in which the business is characterised by digital innovation; acquisition of customers is through digital channels; payments are in the digital mode; and the digital/platform medium serves as the unique selling proposition of the Super App. There are several digital business models that are adopted by Super Apps to be profitable and to sustain profits. Some of the models that are common in the Super App space are • Free Model: In this category, the users of the app are not charged a fee for usage. The services are offered free with the expectation of being able to monetize the user base through the introduction of one or more apps at latter stages. The revenue for such models is basically from the advertisements posted. In many super apps, a free model is used only for a few basic services, such as messaging or calling, to attract users. However, this model cannot be used for all the miniapps within the Super App ecosystem. • Freemium Model: In this model, the basic version of the app will be made available free of cost, but upgrades will be charged. This model is based on the expectation that users’ needs will expand with continued usage of the app, and hence they will not hesitate to use a paid version of the app to avail better service offerings. On Demand/Subscription Model: In this model, the virtual services are charged based on their usage. For example, watching movies, television shows etc. This model is possible only for a few of the services within

Super Apps: The Natural Progression in Fin-Tech  391 a Super App. Essential services such as banking services, shopping, etc., cannot be offered through this model. • Market Place Model: In this model, both the buyer and the seller use the Super App as a market place for their transaction. The revenue for the Super App company is through the transaction fees from merchants or usage charges from the  customers. In some cases, there may be a fee charged for the seller to list their app on the Super App platform. This category includes the majority of ride sharing and travel booking services. Super Apps generally use a combination of the above models to attract and retain users. The success of the model depends on the extent to which the business model will be able to create and deliver value to the users.

17.6 The Super App Market Space and the Business Models The app space is a red ocean with numerous apps for any need of a user. Not all have been able to develop into Super Apps. The following section highlights some of the key players in the segment, the services they offer and their revenue model.

17.6.1 WeChat WeChat/Weixin, a Chinese Super App, is one of the earliest and most successful Super Apps. Popularly referred to as the ‘one app that rules them all’, it was developed by the Chinese technology behemoth Tencent. The journey started with WeChat messenger, an app that was initially developed by the company as a text and voice-messaging app in 2011. Within a decade of its existence, it has over a billion users and hosts numerous apps within it to serve the users’ needs. The ban on several foreign websites and apps in China has been a catalyst for the astounding growth of WeChat. In 2013, the app added a payment system to enable users to transfer funds, receive money, and pay bills. As a logical extension, the addition of other services such as online booking for travel and hotels, rider sharing, investments, insurance, crowd funding, etc. has been launched. The integration of retailers into the app has resulted in the retention of a large user base. With an app for almost every need of a user, WeChat has become a Super App (Figure 17.6). Apart from the countless mini apps and

392  Fintech and Cryptocurrency innovations such as download-free apps that are lite, WeChat has been able to create a monopoly in the Chinese market. The success of the app has been attributed to its ability to imbibe the needs of Chinese users and provide services accordingly. For example, one of the most popular services of WeChat is the ‘red envelope’ money that the Chinese use to gift money during their new year. WeChat capitalised on this by offering a virtual ‘red envelope’ on its payment app, resulting in attracting users and increasing the volume of transactions. WeChat also serves as a platform for several third-party companies and allows them to create mini-programs that can run within the app. Such mini-programs have gained popularity among users as they target specific needs and user groups. For example, Tesla’s mini app helps to schedule test drives, locate the nearest charging stations, and also share their experiences. Similarly, Mobike, a bike-sharing mini-program, allows users to find bikes and use their bikes without leaving the WeChat app. Several mini-programs in the gaming domain also leverage on the user base of WeChat and have been able to become profitable in a short span of time. Revenue Model of WeChat Though most of the apps for individual users are free to download, WeChat also provides some of its services, such as marketing, to business clients at a cost. Revenue generation from the individual users is based on the value-added services such as stickers, games, etc. Gaming has been one major source of revenue for the firm, followed by the live streaming app. Also, due to its large user base, the app enjoys significant inflows from advertisements. The app provides bloggers the autonomy to negotiate the placement of ads within their content, which has been a key differentiator that helped the app create a loyal customer base. As the app has made it possible for users to complete all their requirements without leaving the app, it has gained a loyal customer base. Most of the app providers, excluding key rivals of the company, have started to create a WeChat version of their app. These have also contributed to WeChat Pay being the most popular payment app among users. Though the company does not report the revenue from the app, the astounding growth of the revenue generated from the social networks has grown from 24 billion RMB in 2015 to 108 billion RMB in 2021. The fin-tech arm, which comprises the payment ecosystem, has also been a core revenue generator. As the platform has integrated its payment solutions with multiple mini apps within it, the volume of transactions has grown from 800 billion RMB in 2019 to 1.6 trillion RMB in 2020.

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17.6.2 Alipay A close competitor of WeChat, Alipay is yet another Chinese Super App. However, unlike its competitor, Alipay started off as a payment platform in 2004 for transactions done using Alibaba’s e-commerce platform. The core need for a payment app emerged from the fact that some of the vendors on Alibaba’s e-commerce platform failed to ship the product despite receiving the payment. As this reduced trust among the customers, Alipay, a third-party escrow payment system, was established. After the launch of the system, the seller is credited only when the product purchase is completed and verified by the buyer. The user data gathered is used to create a credit-rating for the users, which is then used by Ant Financial for its other products and services such as investments, insurance, loans, etc. The platform has evolved from a payment enabler to a digital life-service platform for the user’s financial and banking needs (Figure 17.6). Revenue Model of Alipay As Alipay started off as an escrow account that holds the funds until the product is delivered, a large chunk of its revenue comes from the interest

• • • • • • • • • • • • • • •

Messenger Social Media sharing Ride booking Air, train ticketing Movie ticketing Food delivery Games Bill payment E-wallet Investing Loans Reading–books etc. Crowed funding

• • • • •

Ride hailing Hotel and Travel booking Movie ticketing Food delivery Business loans E-wallet Small business insurance

• • • • • • • • •

Bill Payments E-wallet Investing Online Shopping Investment Loans Micro-finance Insurance Movie & Travel booking

Figure 17.6  Leading super apps and their offering.

• • • • • • • • • • •

E-wallet Investing Insurance Lending Bill payment Retail Ride hailing Travel booking Social networking Local services Crowd funding

394  Fintech and Cryptocurrency generated from the funds in the escrow account. Despite the growth of WeChat, Alipay still remains the leader in terms of transaction volume in the Chinese third-party mobile payment market. Revenue is also generated from the transaction fees that Alipay charges the merchants. Alipay also has a large credit business, “credit tech,” through which loans are extended to users. The interest income, along with the partner fees and brokerage from the investment and insurance apps, yields a significant revenue. Other ancillary services such as rides, bookings, etc., and advertisements are also a source of revenue for the firm.

17.6.3 Grab Grab, the most popular Super App in Southeast Asia, is a 2011 app launched by Singapore-based Grab Holdings Inc. The company is now worth more than $14 billion, a remarkable increase in a decade. The first app to be launched was GrabTaxi, an online ride hailing service and dispatch platform that connected provided an internet platform to connect users who were in need of a ride with those who were ready to offer one. Within a decade of its existence, Grab has grown to be one of the largest on-demand businesses. The app is extensively used in Malaysia, Singapore, Indonesia, Thailand, and the Philippines with about 6 million daily rides and employs 2.8 million drivers. To complement the operations of its ride-sharing services, the company launched Grab Pay with the intention of simplifying payments for customers using their ride-sharing services. As the Southeast Asian population was underserved by the formal banking system and credit cards were not available to a large segment, the launch of Grab Pay tapped into the cashless economy without the need for credit cards. The ‘prepaid cards’ option that was launched initially helped to attract users. Besides serving as an e-wallet, Grab Pay has also forayed into the banking services by providing loans for small businesses and insurance products for drivers. The app also provides the ‘pay later’ option for the ride services that enables monthend accumulated payment for rides without any additional cost. Besides the organic growth, the growth of the app was propelled by the company’s acquisition of Uber’s business in six Southeast Asian countries, which drove it to become the largest on-demand “super app” in SE Asia. As a natural extension to leverage its fleet and to provide additional sources of revenue to the drivers, food delivery services like ‘Grab Food’ were launched. The addition of grocery delivery and several other fin-tech products has made the company one of the leading Super Apps in the SE Asian region (Figure 17.6).

Super Apps: The Natural Progression in Fin-Tech  395 Revenue Model of Grab Grab’s total revenue for the year 2021 was reported at $675 million, an increase of 44% from the previous year. The majority of its revenue is through the primary ride hailing services. GrabTaxi receives a portion of the revenue generated based on the per-kilometre rates that users pay for their rides. It charges between 16% (Philippines) and 25% (Malaysia) of the journey charge to use their app service. The proportion charged varies according to the area in which the ride is offered. The merchant fees and delivery charges for its food and grocery deliveries are the second largest. Though it does fin-tech solutions, the revenue from its offerings such as loans, investments, and insurance is not yet a significant contributor to its revenues. The company was able to beat many of its competitors due to its hyper-local strategy. Also, being a home-grown player has its own set of advantages, such as cultural factors that have helped Grab come up with products and solutions that ease the lives of users in the markets they serve.

17.6.4 Paytm Paytm started off as a prepaid mobile and DTH (direct-to-home) recharge platform in 2010 and has grown to become one of the most valued fintech companies in the Indian subcontinent. The app has now expanded its service offering into e-commerce, travel ticket booking, movie tickets, payment for utilities etc. The Paytm Wallet is one of its primary products and has more than 450 million users. The app provides the full range of financial solutions to not just consumers but also to merchants and other online platforms. The foray into the insurance, banking, and gaming sectors has pushed the app towards becoming a Super App (Figure 17.6). The company’s mini app store has more than 1000 apps installed, making it one of the leading Super Apps in India. In its quest to increase the number of mini apps hosted, the company has made available a DIY process flow for app developers. Despite the various offerings and the increase in penetration, the company is yet to achieve profitability. It has set the pace in the Indian digital landscape. Paytm’s Revenue Model Paytm controls approximately 14% of the digital payment market in India, with approximately USD 8 billion in transactions as of September 2021. Revenues flow from its services to individual users, business users, and through its financial services. The cloud-based and e-commerce services contribute to 25% of its revenue, while the financial services contribute

396  Fintech and Cryptocurrency the rest. The basic revenue streams in any app-based company are escrow account balances in accounts, fees on funds transfers, and user fees for their other services. The launch of ‘digital gold’ services and Paytm bank has accelerated the revenue generation through financial services.

17.6.5 The Latest Entrant: Tata Neu The most recent addition to the list of Super Apps is Tata Neu. The app was launched by the conglomerate Tata Group in April 2022. The platform provides users with access to all the product and service offerings of the Tata Group. The app has started with an initial user base of 120 million users and has 2,500 offline stores enrolled. The app currently provides a wide range of customer-first services such as air ticket booking, hotel reservations, car reservations, groceries, food delivery services, and financial services such as investments, utility payments, and money transfer options. The app seeks to garner user support through its reward program, in which users can earn Neu Coins based on their transactions in the app. The app also intends to offer Neu Pass, an exclusive membership to app users that provides privileges in all Tata Brands as well as additional Neu coins for app purchases.

17.6.6 Other Players Besides the above, there are numerous other super apps such as Go-Jek, Rappi, and Kakao that are popular in the respective countries and regions. However, the concept has yet to gain traction in western nations. Many of the players, such as Google, Apple, Square, and Paypal, are starting to expand their service offerings by developing financial service apps. Retaining giants such as Walmart and Amazon are also in the race. The huge population in China, India, and other Southeast Asian countries has been a basic factor that has led to the success of the Super Apps in those regions. The scalability of the app depends on the user base, and this could be a limiting factor for developed nations. Also, as data protection regulations are more stringent in many developed nations, this could be a deterrent to app developers. The success of WeChat in China has also been attributed mainly to the country’s restrictions on other apps such as Google, Facebook, Whatsapp, etc. As such regulations do not exist in many other nations, it still remains to be seen if the other competitors are able to reach the scale and size of WeChat or Alipay.

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17.7 Factors Contributing to the Success of Super Apps The success of a Super App depends on the number of solutions that are provided and the revenue generation capability of the entire bundle of solutions provided. However, there are certain key characteristics that are worth mentioning. This section elaborates on some of the key factors that determine the success of the Super Apps. Hardware Agnostic Though the concept of “Super App” as given by the founder of Blackberry relied on specific hardware requirements, the developments in the industry have been to create apps that are compatible with any device irrespective of hardware specifications. For example, all leading super apps such as WeChat, Grab, Paytm, etc., are available for both Android and iOS platforms with the same functionalities. Optimization with Mobile Device Super Apps target mobile users and, hence, it is essential to ensure that the user experience of the app is not hindered by the capability and performance of the mobile device. As users might possess a variety of devices, it is essential for the providers to consider the entire spectrum of users and the devices that they may use. Compatibility with various screen sizes and memory capacity are two features that require the attention of app developers. The wide range of choices available to users and the compulsion to seek services through other apps lead to a stiff battle for the limited storage of mobile devices. Consequently, only the apps that are able to provide apps that are optimized for the capability of the device will survive. User-Friendliness User experience is crucial for the success of any app. The app should be designed so that users can comprehend and learn its usage with ease. If users must spend a large amount of time learning how to use a product before they can benefit from it, they will reject it. Even if the app can provide immediate value to users, the propensity to abandon the app is greater if the user experience is not delightful. The responsiveness of the app is one basic feature that augments the other features and enhances the user-friendliness of the app. Additionally, giving users a customised, sophisticated visual design and making the app simple to use will leave a

398  Fintech and Cryptocurrency lasting impression on their minds, encouraging them to look forward to using it rather than viewing it as a chore. Ease of Downloading & On-boarding This is one of the basic features of any app that requires the attention of the app developer. From a user perspective, the download size of the app is very crucial. As the mobile devices of the users are already cluttered with numerous other apps, the Super App should have an optimum size. Larger apps receive fewer downloads. The app should also facilitate easy on boarding for both the users and the vendors. If not, app fatigue will set in and users may not download the app. The sign-in process should be effortless, and the app should be able to sync the data with all its offerings. Simple and easy shopping and payment processes are also vital. For vendors, the platform should allow for simple on boarding with minimal effort and by leveraging the company’s APIs. Data Security and Privacy Data is the foundation on which the success of a Super App rests. Super Apps rely on volumes of personal data to create unique user experiences that are personalized. These are possible only with large volumes of data collection about users. Increasing awareness among users about data privacy and infringement is forcing app providers to improve their data security systems. Though data collection and transfer laws have become more stringent than before, Super Apps in one sense reduce the amount of data collected by third-party tools that increase the risk of data piracy. The data gathered by the Super App provider creates only a closed data ecosystem, and the analysis of such first-party data to provide a personalised user experience in many countries is not classified as data tracking. However, when a super app is integrating several third-party apps within its ecosystem, it is essential to ensure the users that the data gathered will remain safe and will not be shared. Since most of the firms providing the Super Apps are large, it is essential to invest in high-security, single-tenancy data storage. Greater responsibility by the providers of super apps in such systems will instil confidence among the users and protect them from fraud and cyber-attacks. Ability to cater to diverse users (heterogeneous market) - Inclusivity The concept of a “Super App” seems to be an oxymoron in today’s marketplace that is keen on providing personalised solutions to users. Attempt to provide a unified solution to a diverse market by integrating multiple

Super Apps: The Natural Progression in Fin-Tech  399 apps. The success of WeChat can be attributed to the homogeneity of the Chinese market. However, if the market is heterogeneous, the customer acquisition costs will increase due to adaptions for multiple languages, cultures, and customer expectations. Apps such as WeChat, Grab, Alipay, and Go-Jek focus on the Asian/SE Asian/Chinese market, which is considered to be relatively more homogeneous than the western world. One reason for the slow growth of such Super Apps in the developed world is heterogeneity. Success will be guaranteed only when the app provider is able to integrate the diverse expectations. Customer loyalty Customer loyalty is a prime factor that ensures customer retention in the increasingly competitive app space. The success of the Super App is a logical extension of a single-purpose app. The customer loyalty of the single-use app is the primary factor that guarantees the success of the Super App. Gaining customer insights and CRM are key to acquiring a loyal customer base. In the digital landscape, creating trust amongst the users is a prime factor in retaining them. Most users may download not just one but multiple Super Apps for the sake of comparing experiences, ease of use, pricing, offers, and loyalty benefits. The key to success is to generate repetitive usage of the app without shifting to competitors. The experience provided by the Super App also helps to shift loyalty from the underlying single-use app to the Super App. Creating such loyal customers will go a long way in getting customers to use various other apps within the Super App. For example, when a customer uses a banking app within a super app and has positive experiences, the loyalty of the customer will shift from the financial services provider to the super app. Speed of Navigation/Response Users lose attention if the app takes longer to respond and navigate. Irrespective of the number of apps that are embedded within, the Super App should be able to provide fast navigation and response. Tough to crack/Safe The app should be designed with adequate safety protocols that make it tough to hack. As Super Apps gather and store vast amounts of data, ensuring that the app is built using an appropriate architecture is key to protecting the app from cyber-attacks. The design should be such that replicating the features to create a phishing attack is difficult.

400  Fintech and Cryptocurrency Offline Mode/features Though most of the transactions can be completed only when there is access to the internet, some basic features must be made available in the offline mode as well. This has become one of the most sought after features in many developing and underdeveloped nations where data availability is restricted. For people residing in remote regions, the availability of key services such as ride booking or banking will be an added advantage. Integration with social media A Super App that only offers serious apps is unlikely to succeed in the present scenario. It is necessary for the apps to provide integration with a social media platform so as to attract customers. Some of the most successful super apps, such as WeChat, started their journey by being a single-­purpose app, more specifically a messaging app. The app leveraged its customer base from such social apps and hence was able to retain customers. As a result, social media apps have the highest usage of any app, and embedding one within the Super App will help improve usage and retention. Bundling of products and pricing An efficient bundling of the functionalities that most users might want and offering them as a service guarantees success for the Super Apps. Such an offering will become more attractive if a lower price is offered than when the individual services are available. Such deals will serve as a point of attraction for other users and stimulate demand. Bundling of services that complement each other or with a service that is in high demand can help to create demand for services that do not have a high market share. For example, offering insurance products at a discounted price for users of banking services or booking a ride when a user books a ticket for a movie, etc. are commonly bundled services.

17.8 Super Apps in Fin-Tech and their Role in the Financial Services Segment The Ernst and Young Global Fin-tech Adoption Index (2019) showed the adoption rate stood at 64%, a huge leap from the 20165 levels of 16% [11]. Fin-Tech was initially used to refer to the firms that provided integration of technology in the financial services sector to enhance or automate the process. In some cases, fin-tech has also led to disruptive innovations in the segment. These include applications for both mobiles and computers. China and India are the leaders in the segment and have been home to

Super Apps: The Natural Progression in Fin-Tech  401 several cutting-edge fin-tech firms and solutions. Though the initial years of the fin-tech revolution were contributed by start-ups, the latter years saw increasing participation from large technology players, called the Big Techs. The segment is today populated with small payers, big techs, and banks, all vying for a share in the same digital financial market-space. The Super Apps have emerged as a significant player in the fin-tech arena with their widespread offerings (Figure 17.7). As financial applications and services draw a large number of users into the Super App platform, they have become one of the most common offerings in Super Apps. Alongside the increased usage of smartphones and the need for digital products, the large segment of the unbanked population across the world has provided a tremendous opportunity for players seeking to venture into the digital financial services segment. The digitization of the services and the possibility to provide mobile-first versions has led to a vast product and service offering in the segment. The old players in the financial services sector, such as banks and financial institutions, have also realised the opportunity. Several fin-tech firms, realising the sweet spot in the digital payment sector, have also capitalised on the opportunity. For example, paytm, which was a payment enabler, has expanded its offering in the financial services vertical. Several fin-tech companies have expanded their services beyond basic services to include more advanced technology-based products such as crypto and blockchain, as well as additional verticals such as insurance, investment, and wealth management. The financial services offered by the leading technology giants and the Super Apps are presented in Table 17.1. Besides the large user databases that these companies possess, the transactional data available to these firms offers them a competitive advantage over the traditional banks. Using targeted marketing strategies, such firms are able to gain a greater market penetration than traditional banks. The

Improved Access to Financial Services

Cost efficiencies and consequent reduction of financial intermediation cost

Leverage user data to customize products, services and distribution channels

Figure 17.7  Potential of super apps in financial service offerings.

402  Fintech and Cryptocurrency

Table 17.1  Financial services by super apps. Big Tech/Super Apps Financial services

Google

Facebook

Amazon

Tencent (WeChat)

Ant group (Alipay)

Paytm

Tata Neu

e-wallet/payments















Lending

✓*

✓*

✓*





























✓%







Life Insurance Investment products Banking Micro Finance

✓*

✓* Indirectly with collaborations; ✓ - Directly; ✓% - Limited operations

Super Apps: The Natural Progression in Fin-Tech  403 alternative data that is possessed by fin-tech firms has been found to have better predictive ability in determining financial needs, credit scores, and repayment patterns [7]. Fraud detection and income-estimation models have also been found to work better with additional behavioural and transactional data generated from Super Apps [3, 5].

17.9 Role of Super Apps in Financial Inclusion The number of unbanked adults across the globe is about 1.7 billion, indicating the high opportunity available for banks and financial service providers. Financial inclusion is not a factor just in developing and underdeveloped nations. For example, the survey by the Federal Deposit Insurance Corporation (FDIC) in the US in 2019 reported that 7.1 million households in the country were unbanked. About 50% of these cited minimum-balance requirements of banks as a barrier to accessing a formal bank. Despite the attention of policymakers and governments, inclusion still remains a challenge, especially in the developing and underdeveloped regions. The inclusion of this underserved category into the banking ambit will aid in creating a social transformation and also improve the economic well-being of those segments. The impact is not just in the individual segment but also on the business segment as well. Many of the small businesses that are not able to access a formal financial service provider will be better off due to the innovative product offerings of the fin-tech sector [9]. The fact that 79% of adults in developing economies own a phone has made financial inclusion a possibility. Technology-driven financial innovations have the potential to further financial inclusion as they can by-pass the current infrastructural barriers in the traditional banking sector [12]. For example, in India, Paytm has helped numerous small and micro businesses jump into digitised payments. Paytm karo’, meaning do paytm transfer, has become almost synonymous with any payment. Because the business model does not charge merchants a commission, adoption has been extremely high. This has led to the creation of an entire ecosystem of services that are required by these small merchants, such as loans, insurance, etc. The inclusion of services for the unorganised and informal sector has led to the rapid growth of Paytm in India. Similarly, on the African continent, super apps such as Jumia Pay, Haabari, M_Pesa, Whatsapp, and Facebook have gained prominence. As Super Apps are not data-heavy, the user base has increased substantially. Large numbers of citizens do not have access to the system or are not integrated into the formal banking system. The financial services provided

404  Fintech and Cryptocurrency through the Super Apps, due to their low level of complexity and ease of use, have gained acceptance across the continent. As financial inclusion drives economic growth [1], governments are viewing mobile-first services as a means to achieve their inclusion objectives. The incumbents in the industry are also gearing up to match the Super App revolution. For example, DBS bank has been fast in the process of jumping into the platform-based bandwagon. DigiBank, its platform-based operations, provides all banking operations on the smart phone in India and Indonesia. Besides the traditional banking services, the bank has also provided a platform for buying and selling used cars, for travel and real estate. State Bank of India (SBI) has launched its digital platform Yono in India, which gives users access to a variety of financial and allied services such as travel bookings, online shopping, bill payments, and so on. The regulatory norms that bind the traditional banks and their traditional ways of operations act as a limiting factor in creating solutions that enable people with lower education levels and weaker economic backgrounds. Most of the app-based financial service products from players in the non-banking arena have captured users only based on their userfriendly features. Solutions targeting the unbanked population use several key elements such as local language options, simple financial terminologies, graphical user interfaces, and simple authentication processes, etc. Some of the Super Apps also heavily leverage on the cultural aspects that affect the savings and payment patterns of users in a particular region or country. Though the traditional financial service sector operators are bound to adhere to more stringent regulatory norms, the shift in customer requirements from an offline to an online array of services has forced them to either provide digital solutions on their own or partner with leading platforms to offer Banking as a service (Baas). In these kinds of offerings, incumbent banks integrate their services or products with a third party. This has been possible with open banking and API integration. For example, the Apple Credit Card is backed by Goldman Sachs Bank. Numerous point-of-sale loans disbursed by the Super Apps are an example of Baas. The rise of open banking, a phenomenon in which Super Apps collect financial data from multiple sources in order to identify financial needs and target customers, also helps to serve the excluded segments of the population. The increasing trend of offering banking-as-a-service on apps has also resulted in greater financial inclusion, which is expected to grow in the future.

Super Apps: The Natural Progression in Fin-Tech  405

17.10 Benefits of Super Apps in the Financial Services Sector The Super Apps provide numerous benefits to the banking and financial services sector (Figure 17.8) in comparison to the traditional banks and financial institutions. Some of them are

17.10.1 Economies of Scale & Cost of Financial Intermediation The traditional banking sector, despite its large customer base, is facing a risk due to its inability to reduce the cost of financial intermediation. The cost is as high as what it was in the 1900s. The various technological advancements have failed to help the banks reduce this. Fin-tech is a way in which this is made possible, specifically those in the Super App category. The large number of users and the huge volumes of user data generated make it possible for the app to offer financial services based on user need. Also, the reduction in human intervention required to take the service [3] to the customer helps to reduce the cost significantly. Contradictory to this, in a traditional banking environment, the presence of a branch with staff would be necessary, adding to the cost of intermediation. In contrast, the large and growing user base of the Super Apps has made the platform-based financial services more scalable. Also, new products rely on technological advancements and have very low fixed cost structures [6]. * Financial Stability * User-data privacy & protection * Lack of clear regulations * Lack of disclosure and transparency norms * Rapid pace of innovation and deployment makes it difficult for regulators to track and follow

* Large user base * Deployment of technology for innovation * Reduce cost of operation * Expanded reach in operations even to last-mile customer * User convenience

Figure 17.8  Benefits and risks.

406  Fintech and Cryptocurrency By attracting more users, the cost per user goes down significantly for these operators, which in turn helps them offer them at more competitive terms for the unserved category.

17.10.2 Size & Speed of Product and Service Offerings Most of the Super Apps have been able to create products and services that cater to even the smallest requirements of their users. With access to high volumes of user data, the Super Apps are able to make very quick decisions on whether a customer is eligible for a product or not. For example, Alipay takes only three minutes to validate the customer and approve a loan. As most of these small customers will not be able to fulfil the requirements of a traditional bank, the Super Apps have been able to capture that market share. Also, as the processing costs would be higher in many cases than the financial needs of small users, they are excluded from the formal banking system. Sometimes, processes such as filling out forms, providing the required documents, and the waiting period of incumbent banks intimidate users. As they are technically reduced in a digital world, Super Apps have been able to bring numerous such users into the formal banking ambit.

17.10.3 The Power of Data and the Speed of Responsiveness As indicated earlier, the live user data that Super Apps own has been the key to their success. With advanced analytics and AI tools, these companies are able to sense the needs of their users very quickly. Similarly, as products are launched in digital mode, the amount of time taken to create such apps is also very small. This speed of responsiveness has been a great advantage. Customization of products to suit user needs is also made possible through analytics. Despite the large user base and the volumes of data that banks possess, they have not been as fast as the Super Apps in responding to customer requirements and they may not be as technologically competent as the Super Apps.

17.11 Risks due to Super Apps in the Financial System Despite the benefits that a Super App can bring, there are numerous risks that arise due to such technology-based operations (Figure 17.8). Some of them are as follows.

Super Apps: The Natural Progression in Fin-Tech  407

17.11.1 Financial Stability The entry of the Super Aps into the financial services arena has been regulated by strict policies to ensure financial stability within the financial system. As their services rely on innovations through technology developments, some of the traditional regulations such as liquidity and solvency requirements cannot be enforced on them, increasing the risk for the customers. However, some of the Super Apps such as Paytm have been able to gain an entry into the banking segment in India through the ‘payments bank’ licence obtained in 2017. Though credit cards cannot be issued and loans cannot be advanced, the payment bank has made banking services possible for numerous small businesses. The bank, in its short span of existence, has about 300 million wallets and 60 million bank accounts, giving a big push to financial inclusion in India. Tencent, the company offering WeChat, has been able to obtain permission from the regulators for micro financing, insurance, and mutual fund investments on its messenger platform. Even in developed nations, there is a gradual shift in the financial services offerings, with Facebook and Apple leveraging their payment platforms for payment applications. Sector specific risks that undermine financial stability can be overcome by framing regulations for the platform operators. The flipside of this is that innovation may be curtailed. Also, as competition is very high, the platform-based models may seek to increase their revenues without verifying if the customer is credit-worthy or not. The increased revenue generated by the user experience on the platform’s other apps will serve as an incentive for such actions. If left unregulated, this will result in increased operational risks and will be a huge threat to the financial system.

17.11.2 Market Concentration The rapid expansion of Super Apps creates a systemic risk [14] in the financial system. The risk is high in the Asian countries where Super Apps are more prominent and have a large user base. A significant threat emerges due to the market concentration that is possible due to the Super Apps. Concentration risk arises from not just the users enrolled in the app but also because the big techs are the cloud service providers for the incumbent banks as well. The vulnerabilities from such high dependence create a potential threat to the system. The data possessed by the Super Apps will by itself result in a huge data asymmetry, leading to concentration and dominance in the market. In China, the high degree of concentration is

408  Fintech and Cryptocurrency observed using measures of HHI (Herfindahl–Hirschman Index), a measure of market concentration [2].

17.11.3 Dis-Intermediation of Banks from Customer The ease of use of platform-based apps, as well as their rapid adoption results in significant disintermediation of banks from customers. Fin-tech innovations have led to the removal of multiple layers that existed in the payment system. The dependence on the platforms for payment systems leads to further disintermediation. As more layers are added between the bank and the customer, a shift in customer loyalty from the bank to the Super App will happen. Customer relationships will, in such cases, move away from the bank to the app provider.

17.12 Regulatory Measures to Mitigate the Risks As the above risks are imminent and the fact that Super Apps and their dominance cannot be ignored, countries have geared up by formulating regulations to mitigate the risks [4]. Some countries have very stringent regulatory mechanisms in place, while a few others have a “let things happen” approach. Not all the regulations have a curtailing effect on the system. For example, in India, the launch of the UPI has been a catalyst for the digital economy while at the same time increasing the power of the Reserve Bank of India. As data privacy and the concentration of the market pose imminent risks, several countries have formulated new or amended old regulations accordingly. Some of the prominent regulations are presented in Table 17.2.

17.13 The Future of Super Apps Despite the fact that Super Apps seem to be a logical extension to single-purpose apps and that they have been successful in some countries, there are several challenges. In the West and in more developed economies, the adoption of Super Apps cannot be expected to be as fast or large as that in China and India. Consumers in the developed nations are more mature and are already using well established traditional financial products, which reduces the need for Super Apps. Though digital versions of traditional products will be a necessity, they may rely on the bank for such services [13]. The legacy industry has well established and developed

Super Apps: The Natural Progression in Fin-Tech  409 Table 17.2  Key regulatory initiatives. Countries where applicable

Name of the initiative

Details

Unified Payments Interface (UPI)

An instant real-time payment system that can be accessed by all payment service providers, UPI helps to link more than one bank account into a single mobile application for transfer of funds

India

Regulation on Nonbanking Payment Agencies by PBOC

Regulations for setting up and operation of non-banking payment agencies

China

Know Your Customer (KYC)

Collection and periodic updation of details of customers as done by a traditional bank

Many Countries

Measures for Protection of Financial Consumer Rights and Interests, 2020

Incorporation of appropriate measures to protect rights and interests of financial consumers through corporate governance and internal control systems

China

General Data Protection Regulation (GDPR)

Implemented in 2018, laid rules with regard to the processing of personal data. It made obtaining customer consent necessary before information can be shared.

European Union

Data Privacy Regulation

Available in most countries with varying levels of intensity to protect valuable customer data.

Few best include California, Australia, Singapore, China, Switzerland, India

410  Fintech and Cryptocurrency products that fit the needs of the users in these nations. Also, the usage of computers is high in developed nations, and hence a smart phone-based application may not be a real need. Also, developed nations have a well-­ established internet economy, which has also been cited as a reason for the slow-growth of Super Apps [10]. In developed countries, trust in Super Apps for data protection is also low, posing a challenge to the growth of such apps in the financial services sector. The growth of the Super Apps in China was also largely due to the ban imposed by the Chinese government on the Big Techs such as Google, Twitter, Facebook etc. This is not the case in the developed nations, where the technology giants have a significant user base. The dominance of the Super Apps in the SE Asian region and Africa in the payment sector relies on creating a cashless economy. However, in the West, cashless may not fit the bill due to the high dependence on credit-based patterns. For example, in the US, credit cards occupy a large market share and it may be difficult to move such customers to a cashless option that requires a cash balance in the account. The need to conquer the emerging user base in the developed nations requires technology giants and traditional banks to forge partnerships so as to create innovative solutions to tap the users.

17.14 Conclusion Super Apps have disrupted the operations of not just the traditional financial services sector but also the fin-tech industry. The ease with which the Super Apps customise service offerings for their large user base. The immense value that such services have created for their users has fuelled their success. The deregulation of Super Apps and the adoption of an open banking architecture in many countries are sure to increase the markets for Super Apps. The increasing prominence also leads to an increase in the regulatory landscape, creating more challenges. Data privacy laws, competition laws, and consumer protection laws will determine the pace of growth of the Super Apps. The key feature of personalization may also not remain if such stringent rules come into force. Though numerous competitors may exist in the initial phases, not all players will be able to grow and sustain. This will create a lop-sided market resulting in a monopoly or monopolistic market, leading to more monitoring and operating regulations, which in turn lead to numerous legal battles. But, until then, all seems rosy for the Super Apps.

Super Apps: The Natural Progression in Fin-Tech  411

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412  Fintech and Cryptocurrency 15. Y. Zhang-Zhang, S. Rohlfer, and J. Rajasekera, An eco-systematic view of cross-sector FinTech: The case of Alibaba and Tencent. Sustainability, Vol.1 2, No.21, pp.8907, 2020. doi:10.3390/su12218907 16. https://global.alipay.com 17. https://grab.com 18. https://paytm.com 19. https://www.statista.com/statistics/245501/multiple-mobile-device-ownership-​ worldwide/#:~:text=In%202021%2C%20the%20number%20of,devices%20 compared%20to%202020%20levels 20. https://www.statista.com/statistics/203734/global-smartphone-penetrationper-capita-since-2005/ 21. https://www.tata.com/tatadigital 22. https://www.wechat.com

Index Page numbers followed by f and t indicate figures and tables, respectively. Academic Token, 227 Accenture, 53 Accessibility bias, 258 Acko, 66, 160 Acorns, 148f, 327 Adadelta optimizer, 295 Adagrad optimizer, 295 Adam optimizer, 295 Adaptive thresholding, 283, 284–285 Addiction, gambling, 197–198 Adoption of Fintech conceptual framework, 77 evolution of Fintech, 61–62 Fintech 1.0, building infrastructure, 61t, 62 FinTech 2.0, disrupters unbundle financial business, 61t, 62 Fintech 3.0, start up era, 61t, 62 Fintech 3.5, emerging markets, 61t, 62 Fintech ecosystem, 69–71 industry, challenges of, 74–75 acquiring long-term users, 75 data security and privacy, 74 focus on user retention and customer experience, 74–75 regulatory and compliance law, 74 winning business model, finding, 75 overview, 60–75 prepositions for, 72–74 boon during Covid-19, 73 choice of financial services, 72 convenience, 73–74

price, 73 speed, 73 transparency, 72, 73 proposed model and hypothesis framed, 79–82 intention to adopt fintech, 79–81 PEOU (perceived ease of use), 78, 79, 80 PU, 78, 79–81 social influence (SI), 80–81 social norms, 78, 79, 80–81 trust, 78, 79, 81–82 research questions objectives and, 76–77 statement of problem and, 75–76 TAM model, 77–79 taxonomy of Fintech business model, 66–69 capital market model, 69 crowdfunding model, 68 insurance services model, 69 payment business models, 67 P2P lending model, 68–69 wealth management model, 67–68 technology innovation in financial sector, 63–66 growth of Fintech, global perspective, 63–65 growth of Fintech, Indian perspective, 65–66 Advertising, cryptocurrencies for, 227 Advisor segment based robo-advisors, 366–367

413

414  Index Affiliate Coin, 227 Affiliate Markets, 227 AGFI (Goodness of Fit Adjusted Index), 378 Agreeableness, 254, 258–259 AI. see Artificial intelligence (AI) Airbnb, 38–39 Alexa (Amazon), 304, 305, 370–371 Algorithm-based reasoning, 37 Alibaba, 9, 39, 109, 393 Ali Pay, 308, 393–394, 396, 399, 406 Allied Market Research (AMR) report, 63 Ally Assist (Ally Bank), 305, 314, 360 Ally Bank (Ally Assist), 305, 314, 360 Ally Invest Managed Portfolios, 369 Alphabet Inc, 158 Altcoins, valuation of, 197 Amazon, 43, 304, 305, 308, 316, 370–371, 396 Amazon Echo, 304, 371 Amazon pay, 145, 149f American Express, 304 Analysis of variance (ANOVA), 167, 330, 331, 334, 341, 342, 343 “Analytical study of Fintech in India: Pre & Post Pandemic Covid-19,” 145 Analytic hierarchy process (AHP), 222 Anchoring, 196 Android, 397 Angel funds, 66 AngelList, 68 ANNs (artificial neural networks), 239 ANOVA (analysis of variance), 167, 330, 331, 334, 341, 342, 343 Ant Financial, 393 Ant Group Co. Ltd., 65 Anxiety, 199 API (Application Program Interface) system, 66, 307 Apple, 304, 305, 316, 329, 396, 407 Apple App Store, 384 Apple Credit Card, 404

Apple Pay, 62, 67, 327 Application layer, 387 Application Program Interface (API) system, 66, 307 ARIMA model, 237 Armada Investment Group, 361 Arthayantra, 366 Artificial intelligence (AI), 280, 353–354 adoption, 304, 317 advantages, 354–355 AI-based software, 305 algorithms, 26 in asset management, 48–50 banking and, 35–38 artificial common intelligence, 37 basic algorithms and machine intellect, 37 ultra smart AI, 37–38 banking chat bot services, 370 cloud computing, 19 compliance management, 49–50 components, 36 conversational interfaces, 304 in cryptocurrency. see Digital technologies and AI in cryptocurrency FinTech using, 3, 4, 5, 6, 14, 17 insurance industry, 52–53 lending & AI-based credit analysis, 46–48 opportunities in Fintech, 40–43 automation, 40–42 customization, 43 improved decision making, 42–43 payment transactions and, 45–46 personal banking apps by, 305 robot financial advisors AI-based automated tax planning, 50–51 estate planning, 51 technologies, 304–305 understanding of investor profiles using, 365–366

Index  415 use, 305 voice bit, 304 wealth management model, 67, 68 Artificial neural networks (ANNs), 239 Asia Pacific–Fintech transactions, 141t–142t, 143f Asia-Pacific Robo advisory market, 362 Asset managers, 358 Assistive technologies in ML and DL, 238 Atlantic Council CBDC Tracker report, 174 Attentive memory module, WAMCS, 239 Attitude towards transaction, respondents, 263, 264t–265t, 268 Augmentation approach, image, 286, 288–289 Augmented Reality (AR) applications, 228 Automated robo advisor services, 375 Automation, 40–42, 354, 355 bots, 41 enterprise automation, 41–42 iPaaS, 41 iSaaS, 41 robo-advisor financial services, 362 RPA, 40–41 Availability bias, 196 Average variance extracted (AVE) values, 116–120 Awareness on cryptocurrencies, 261–263, 268 Backers, 22 Bahamas, 175, 176 Balderton Capital, 361 Bankable, 65 Banking, analytical study of Fin-Tech in empirical results, 165–169 CU on ICUF services, 168

PEU on ICUF services, 168 PU on ICUF services, 168 SI on ICUF services, 169 literature analysis and development of hypothesis, 160–162 CU and WUF services, 162 PU and WUF services, 161 SI and WUF services, 162 SU and WUF services, 161–162 overview, 158–160 research design, 163–165 Banking as a service (Baas), 404 Banking industry benefits of using chatbots in, 355–356 in Malaysia, voice bot assistance. see Voice bot assistance in banking industry TAM in fintech mobile applications. see Technology Acceptance Model (TAM) Banking with digital technologies, reshaping AI and, 35–38 artificial common intelligence, 37 basic algorithms and machine intellect, 37 ultra smart AI, 37–38 AI opportunities in Fintech, 40–43 automation, 40–42 customization, 43 improved decision making, 42–43 challenges faced by Fintech in, 53–54 blockchain integration, 53–54 customer trust, 53 regulatory compliance, 53 Fintech evolution, 38–39 insurance, 52–53 lending & AI-based credit analysis, 46–48 payments, technology on, 44–46 wealth management, 48–51

416  Index compliance management, 49–50 portfolio management, 48–49 robo-advisory, 50–51 Bank of America (BofA), 63, 304, 305, 313–314, 360 Bankruptcy, 20, 49 Banks from customer, disintermediation of, 408 economy and, 352 Barclays, 8, 62 Barter system, 252 BCAP, 224 BCG, 309 Behavioural finance, 195–196 Belief customer, 162 digital currency mechanisms, 184–185 Betterment, 148f, 327, 357–358, 360, 361, 363–364, 367–368 Betterment Everyday, 367–368 Betting, 199 BharatPe, 66, 149f, 160 Bharti Axa, 150f BHIM, 175 Big data, 20, 22, 70, 126, 326, 343 competence in fintech market, 353 FinTech using, 5, 14 key digitalization technology, 19 Big Five personality theory, 254–260 agreeableness, 254, 258–259 conscientiousness, 254, 256–257 extroversion, 254, 257–258 neuroticism, 254, 259–260 openness to experience, 254–255 Bigtech, 16, 401, 402t, 407, 410 Bill Desk, 160 Bitcoins (BTC), 9, 23, 62, 91, 92, 93, 97, 98, 173, 174, 176 blockchain in, 223 experience volatility, 197 ICOs, concepts for, 226 market capitalization of, 224, 225f

mining, 234, 235–236 P2P payment systems, 237 returns, unpredictability of, 94 transactions, blockchain-based, 230 volatility, 238 Bitfinex, 97 BI (brand image) toward usage of Fintech, 333, 335, 336, 338–340, 342–343, 344 BlackBerry, 384, 397 Blinc Insights report, 65 Blockbuster, 20 Blockchain, 176, 194 asset, 96 based network, currencies on, 176 -based project, 226 in Bitcoins, 223 development courses, 227 integration, 53–54 peer-to-peer fund transfers, 222 platform, Hyperledger, 231 technology, 4, 62, 106, 173, 174, 196, 228 adoption of, 230, 234 cryptocurrencies for CE and, 240–242 technology, financial transaction using external constructs, 230–234 overview, 229–230 TAM model, 230 types, 222 Blockchain Capital, 224 Blockstream Corporation Inc., 65 BofA (Bank of America), 63, 304, 305, 313–314, 360 Borrowing, excessive, 26 Bots, 41 Brand image (BI) toward usage of Fintech, 333, 335, 336, 338–340, 342–343, 344 Breach, data, 183 British Pound, 99 BTC, 98

Index  417 Business Insider Intelligence report, 43 Business logic layer, architecture of Super App, 387 Business models of Super Apps freemium model, 390–391 free model, 390 Cantonese, 370 Capgemini Digital survey, 316 Capital market model, 69 Captcha model Decoder, 279 literature review, 279–283 CNN/ConvNet, 280–281 transfer learning, 281–283 overview, 277–279 proposed approach, 283–289 data acquisition, 283, 284–289 data pre-processing and exploratory analysis, 283, 284f results and discussions, 289–300 CNN, 289, 291–292, 293f DenseNet, 292, 293–294 hyperparameters specifications, 289, 290t MobileNet, 295–296 VGG16, 297–300 Cash bean, 147f Cashe, 147f Cashless transactions, 76 CA (Cronbach’s alpha) test, 116–120, 150, 151, 152, 163, 165 CBDC. see Central Bank Digital Currency (CBDC) Cboe Volatility Index, 94 CBS (core banking solutions), 138 CE (collaborative economy), cryptocurrencies for blockchain technology and, 240–242 CE and digital platforms, 241 collaborative consumption, emergence of, 242 overview, 240–241

Censio, 69 Central Bank Digital Currency (CBDC), 159t, 173, 174, 175 acceptance of, 185–188 benefits, for public welfare, 176 design choices, 176 DLT and, 183 implementation in India, 186 infrastructure for, 182 methodology and sampling, 177–179 risk for cyber-attacks, 183 trust and belief, 184–185 Central bank of India, 158, 159t Chargebee, 160 Charles Schwab Intelligent Portfolios, 368 Chatbots, 43, 51, 304, 305, 316, 317, 319 AI-based financial, 370 benefits of using, 355–356 financial institutions to deploy, 360 China Central Depository & Clearing Co., Ltd (CCDC), 181 China Merchants Bank, 358 Chinese Renminbi (CNY), 99 Chloe, 68 Circle Internet Financial Limited, 65 Cisco Systems Inc., 65 Cloud computing, 19, 38, 69, 70, 343 Cloud mining, 235, 236 Cluster sampling method, 200 CNNs. see Convolutional neural networks (CNNs) Cognitive computing, 37 Coinbase, 327 CoinDCX, 160 CoinSwitch, 66 Collaborative consumption, emergence of, 242 Collaborative economy (CE), cryptocurrencies for blockchain technology and, 240–242

418  Index CE and digital platforms, 241 collaborative consumption, emergence of, 242 overview, 240–241 Collaborative practices, promoting diffusion of, 242 Common method variance (CMV), 116 Communication, publication and advertising as means of, 227 Compliance law, fintech ecosystem, 74 Compliance management, 49–50 Composite reliability (CR) values, 116–120 Compound annual growth rate (CAGR), 44, 63, 65 Comprehensive advisors, 365–366 Computer-supported cooperative work (CSCW), 5 Computer vision, 238, 280 Conscientiousness, 254, 256–257 Consumer attitudes, 109 Consumer Financial Protection Bureau, 43 Consumer perception, 317 Consumer’s trust, 230–231 Contactless payment methods, 76 Continuance intention, to adopt Fintech services. see also Customer satisfaction and Fintech adoption literature review, 114 overview, 106–108 TAM model, 110 Convenience in decision making, 316–317 Convenience sampling method, 334 Conversation banking, 305 ConvNet, 280–281 Convolution, defined, 278 Convolutional neural networks (CNNs), 280–281 architecture, 279 classification report, 292t

CNN-RNN algorithm, 279 convolutional layer, 280 deep residual, 279 distinguishing feature of, 280 forecasting cryptocurrency price using, 237–240 fully connected layer, 281 image analysis tasks using, 278 pooling layer, 280–281 prime pros of, 281 ReLU correction layer, 281 results and discussions, 289, 291–292, 293f Convolutional neural networks (CNNs), forecasting cryptocurrency price using assistive technologies in ML and DL, 238 CNNs with WAMCS, 238–239 attentive memory module, 239 convolution & pooling module, 239 overview, 237 Convolution & pooling module, 239 Coordinates, 266 defined, 263 Core banking solutions (CBS), 138 Cost(s) of financial intermediation, 405–406 fintech services, 73 of operating and maintaining Super Apps, 386–387 robo advisory, 371, 373 Coverfox, 69 Covid-19 pandemic, 45, 309, 331 adoption of Fintech and loyalty, 82 on digital finance app adoption, 64, 73, 76–77, 78, 81, 82 on Robo advisory market, 362–363 CRED, 66, 160 Credit counseling companies, 47 CreditEase, 358 “Credit tech,” 394

Index  419 Cronbach’s alpha (CA) test, 116–120, 150, 151, 152, 163, 165 Crowdcube, 68 CrowdFunder, 68 Crowdfunding, 22, 63, 66–67, 68, 327 Crowd lending, 66–67 Crowdrise, 68 Crypto-assets, 96, 99, 126, 226 management, 229 valuations of, 197 Cryptocurrency(ies), 6, 23, 66–67, 176, 196–197. see also Crypto-trade in India adoption, 195 application areas of, 222, 224–229 e-commerce and entertainment, 228 education, 227 freight transportation and travel, 226 fundraising and investments, 224–226 publication and advertising as means of communication, 227 real estate and stock market, 228 trained financial planners, 228–229 bitcoin. see Bitcoins (BTC) for CE, blockchain technology and, 240–242 CE and digital platforms, 241 collaborative consumption, emergence of, 242 overview, 240–241 digital technologies and AI in. see Digital technologies and AI in cryptocurrency exchanges, 327 as financial asset findings, 96–97 literature review, 92–94 as major financial asset, 97–98 methodology, 95–96 overview, 91–92

value, current market trends, 98–99 forecasting price using CNNs, 237–240 assistive technologies in ML and DL, 238 CNNs with WAMCS, 238–239 overview, 237 future, In India, 263, 266t market capitalization of, 223 mining of, 182 mining using hybrid approach, 234–236 mining strategies, 235–236 overview, 234–235 personality on savings and investment in. see Personality on savings and investment in cryptos petro, 176 prices of, 197 security risks, 223 willingness to invest in, 263, 264t–265t Crypto securities, 96 Crypto-trade in India data analysis & interpretation, 201–214 education levels of cryptoinvestors, 201, 210–214 Independent samples t-test for gender, 201, 206t–208t, 209–210 Independent samples t-test for retail investors vs. investment advisors, 202t–204t overview, 194–195 research methodology aim of study, 200 limitations of study, 201 objectives of study, 200 sampling methodology & data analysis, 200–201 review of literature addiction/analysis, 197–198

420  Index cryptocurrency, 196–197 finance & sentiments, 195–196 FOMO, 198–199 suggestions & recommendations, 214–217 Crypto utility assets, 96 CSCW (computer-supported cooperative work), 5 CUBE Wealth, 366 Currency, defined, 194 Customer acquisition, 312–313 disintermediation of banks from, 408 loyalty, 399 service, 312 trust, 53, 164t, 166t, 399 Customer Belief (CU) in Fin-Tech services, 157–158, 166 on ICUF services, 168 WUF services and, 162 Customer experience enhanced, 311 focus on, 74–75 Customer innovativeness, 110–111 Customer satisfaction and Fintech adoption discussion, 122–126 Fintech phenomenon in developing countries, 108–109 literature review, 110 conceptual model, 115 customer innovativeness, 110–111 hedonic motivation, 111 hypothesis development, 114–115 PEOU, 112–113 perceived usefulness, 111–112 system quality, 113 TAM, 109–110 technology self-efficacy, 113–114 overview, 106–108 research methodology, 115, 116–120

measures of constructs, 116 sample and data collection, 115, 116 validity and reliability assessment, 116–120 results demographic profile of respondent, 120 SEM analysis, 120–122 theoretical and practical implications, 126–127 Customer trust, 53, 164t, 166t Cyber-attacks, 183 Cybersecurity multi-layer encryption and, 328 risk, 123 threats, 26 Dash, 92 Data acquisition, 283, 284–289 adaptive thresholding, 283, 284–285 image data generation, 286, 288–289 image dilation, 285, 286f One Hot Encoding approach, 286 segmentation of images, 285, 286, 287f, 288t analysis crypto-trade in India, 200–201 interpretation and, trading in cryptocurrencies, 201–214 breach, 183 collection, customers’ satisfaction to adopt Fintech services, 115, 116 collection of, 377 generation, image, 286, 288–289 power, speed of responsiveness and, 406 pre-processing and exploratory analysis, 283, 284f privacy, digital currency mechanisms and, 184

Index  421 security issues, 107 privacy and, 74, 398 theft, 26 Data Analytics, 106 Data layer, architecture of Super App, 387 Data Privacy Regulation, 409t Day-trading, 197–198 DBS bank, 404 Decentralization, crypto currency, 263, 264t–265t Decentralized Autonomous Organization (DAO), 223 Decision making, improved, 42–43 Deep learning (DL) assistive technologies in, 238 models in credit evaluation, 46 system, CNN/ConvNet, 280–281 Deep mastering algorithms, 221 Deep neural network in security. see CAPTCHA model Deloitte, 36, 384 Demographic profile of respondents, 120, 336–337 Demonetization, 174 Denial-of-service attacks, 223, 235 Dense Blocks, 279 DenseNet, 279, 292, 293–294 Developing countries customers’ technology self-efficacy in, 126 Fintech phenomenon in, 108–109 Fintech services in, 115, 116, 123, 127, 384 Device mastering algorithms, 221 DFSs (digital financial services) innovation in, 14 research on, 18 Diffusion of collaborative practices, promoting, 242 DigiBank, 404 Digit, 160

Digital banking, 327 Digital business models, 390 Digital currency, payment disruption mechanism acceptance of CBDC, 185–188 methodology and sampling, 177–179 overview, 173–175 results and discussion, 179–185 financial literacy & inclusion, 180–181 infrastructure and intermediaries, 181–183 technical know-how, 183–184 trust and belief, 184–185 review of literature, 175–176 Digital financial services (DFSs) innovation in, 14 research on, 18 Digital financing, 66–67 Digital Free Trade Zone (DFTZTM), 109 Digital Insurance, 66 Digital investment, 66–67 Digitalization benefit of, 19 of financial services, 1, 2, 21 technologies, 19 Digital money, 66–67 “Digital Money & Wallet: A Conceptual Framework,” 145 Digital payments, 66–67 Digital platforms, CE and, 241 Digital technologies, reshaping banking with AI opportunities in Fintech, 40–43 automation, 40–42 customization, 43 improved decision making, 42–43 banking and AI, 35–38 artificial common intelligence, 37 basic algorithms and machine intellect, 37 ultra smart AI, 37–38

422  Index challenges faced by Fintech in banking, 53–54 blockchain integration, 53–54 customer trust, 53 regulatory compliance, 53 Fintech evolution, 38–39 insurance, 52–53 lending & AI-based credit analysis, 46–48 payments, technology on, 44–46 wealth management, 48–51 compliance management, 49–50 portfolio management, 48–49 robo-advisory, 50–51 Digital technologies and AI in cryptocurrency application areas of cryptocurrencies, 224–229 e-commerce and entertainment, 228 education, 227 freight transportation and travel, 226 fundraising and investments, 224–226 publication and advertising as means of communication, 227 real estate and stock market, 228 trained financial planners, 228–229 blockchain technology and cryptocurrencies for CE, 240–242 CE and digital platforms, 241 collaborative consumption, emergence of, 242 overview, 240–241 cryptocurrency mining using hybrid approach, 234–236 mining strategies, 235–236 overview, 234–235 financial transaction using blockchain technology external constructs, 230–234 overview, 229–230 TAM model, 230

forecasting cryptocurrency price using CNNs, 237–240 assistive technologies in ML and DL, 238 CNNs with WAMCS, 238–239 overview, 237 overview, 222–223 state-of-the-art review, 223–224 Digital transformation of financial services advantages, 25 conceptual overview, 20–21 FinTech ecosystem, 21–24 overview, 13–16 review of literature, 16–20 studies on digital transformation, 18–20 studies on FinTech, 16–18 role, with respect to financial services, 24–27 Digital wallets, acceptance of, 186 Digi wallet, concept of, 147 Dilation, image, 285, 286f Diner’s Club, 8 Disintermediation of banks from customer, 408 Distributed ledger technology (DLT), 183, 229 DNS, 2018 attack on, 223 Documentation, estate planning, 51 Donation-based crowd funding, 68 Dori, 370 Dot-Com bubble, 15 Dovu, 226 “Drivers of FinTech in India - A Study of Customers’ Attitude and Adoption,” 144 Drones, 5 Drug trafficking, 176 DTH (direct-to-home) recharge platform, 395 Early Shares, 68 E-commerce

Index  423 cryptocurrencies for, 228 platform, Alibaba’s, 393 Economies of scale, 405–406 Economy, banks and, 352 Education, cryptocurrency technologies in, 227 Education levels, of crypto-investors, 201, 210–214 EFA (exploratory factor analysis), 116, 163, 165, 166, 330 Effort expectancy, 376 Electronic fund transfers, 174, 175 Electronic money, 66–67 Electronic payment systems in India, 73, 159t, 160, 175, 182 Electronic Trading-Geojit Securities, 159t Electronic virtual assistant (EVA), 370 Ellevest, 327, 358, 368–369 e-loyalty, 82 eMarketer, 304 E-marketing, 316 Emotional instability, 259 ‘e-Naira,’ 175 Endogenous/criterion/prognostic variable, 152 End-users, 70–71, 74 contactless payment methods, 76 future needs of, 66 loyalty of, 77, 78, 79, 82 modernised payments experience, 67 Enhanced Crossover Optimization (ICRMBO) algorithm, 289 Enterprise automation, 41–42 Entertainment, cryptocurrencies for, 228 Environment, social and governance (ESG), 126 Equity-based crowdfunding platforms, 68 Equity-based “robo advisors,” 366–367 Erica, 304, 305, 313–314, 360

“e-RUPI,” 182 Escalation of commitment, 258 Essential Portfolios, 369 Estate planning, 51 Estimize, 69 Ether, 98 Ethereum, 92, 93, 97, 98, 173, 174, 223, 229, 261, 268 eToro, 69 Euro, 99 EVA (electronic virtual assistant), 370 e-Wallets, 23–24, 82, 174 Grab Pay, 394 payment system, customers’ satisfaction in, 112 Excessive borrowing, 26 Exogenous/predictor variables, 152 Experience (E), customers’ use of new technologies, 232 Exploratory analysis, data preprocessing and, 283, 284f Exploratory factor analysis (EFA), 116, 163, 165, 166, 330 Exposure at default (EAD), 46 Extroversion, 254, 257–258 Facebook, 38–39, 183, 396, 403, 407, 410 Facebook Libra, 96 Facilitating conditions, 376 Fear-of-missing-out (FOMO), 193, 198–199, 210, 216 Feature Map, 278 Federal Deposit Insurance Corporation (FDIC), 403 Fedwire, 62 FEM. see Five-factor model (FFM) FGD (Focus Group Discussion) survey, 177–179, 180, 183, 186 Fiat currency, 174, 175, 180, 185 FICO ratings, 46, 47 Fidelity, 369 Fidelity Flex mutual funds, 369

424  Index Fidelity Go, 369 Filters, image’s spatial localization, 278 Finance behavioural, 195–196 sentiments and, 195–196 Finance technology (Fintech). see FinTech Financial Advisor (FA), robo-advisor vs., 359 Financial era, evolution of Fintech in. see FinTech, evolution of Financial inclusion, 8, 17, 18, 24, 180–181 Super Apps in, 403–404 Financial infrastructure, 181–183 Financial intermediation, cost of, 405–406 Financial knowledge, 377 Financial literacy, 175, 180–181, 254 Financial services benefits of Super Apps in economies of scale & cost of financial intermediation, 405–406 power of data and speed of responsiveness, 406 size & speed of product and service offerings, 406 choice of, 72 digital transformation of. see Digital transformation of financial services technology innovation in, 63–66 Financial stability, risks due to Super Apps in financial system, 407 Financial Stability Board (FSB), 60 Financial system, Super Apps in risks due to, 406–408 disintermediation of banks from customer, 408 financial stability, 407 market concentration, 407–408

Financial transaction using blockchain technology external constructs, 230–234 consumer’s trust, 230–231 design (D), 233–234 experience (E), 232 social influence (SI), 233 support (RS) for regulatory standards, 232 overview, 229–230 TAM model, 230 Financial world, evolution of Fintech in, 7–9 FinCEN Artificial Intelligence System (FAIS), 360 Fine-tuning of pre-trained model, 295 FinTech adoption rate in India, 108–109 AI opportunities in, 40–43 automation, 40–42 customization, 43 improved decision making, 42–43 banking and, 16 benefits, 24–25 challenges, in banking, 53–54 blockchain integration, 53–54 customer trust, 53 regulatory compliance, 53 competitors, 329 defined, 22, 39, 60, 326 digital transformation of financial services. see Digital transformation of financial services ecosystem, 21–24, 69–71 growth global perspective, 63–65 Indian perspective, 65–66 industry, challenges of, 74–75 acquiring long-term users, 75 data security and privacy, 74 focus on user retention and customer experience, 74–75

Index  425 regulatory and compliance law, 74 winning business model, finding, 75 mobile applications for banking, TAM in. see Technology Acceptance Model (TAM) overview, 326–327 role, with respect to financial services, 24–27 studies on, 16–18 super apps in, 400–403. see also Super Apps taxonomy of Fintech business model, 66–69 capital market model, 69 crowdfunding model, 68 insurance services model, 69 payment business models, 67 P2P lending model, 68–69 wealth management model, 67–68 FinTech, evolution of, 38–39, 61–62 compliance mechanism, 5 in financial world, 7–9 financing opportunities, 5 Fintech 1.0, building infrastructure, 61t, 62 FinTech 2.0, disrupters unbundle financial business, 61t, 62 Fintech 3.0, start up era, 61t, 62 Fintech 3.5, emerging markets, 61t, 62 framework of, 6 future framework, 7 objectives and research methodology, 4 overview, 1–2 platforms, 6 prepositions for, 72–74 boon during Covid-19, 73 choice of financial services, 72 convenience, 73–74 price, 73

speed, 73 transparency, 72, 73 review of literature, 2–4 tools and techniques in, 5–7 working of, 4–5 “Fintech and Digital Transformation of Financial Services: Implications for Market Structure and Public Policy,” 144 Fintech apps insurance apps, 148, 150f investment apps, 145, 146, 148f lending apps, 145, 147f methodology, 150 MLR, 152–153 need for study, 144 objectives, 142 overview, 138–142 payment apps, 147, 149f proposed model, 145, 146f results and discussions, 151–152 review of literature, 144–145 SEM, 154 statement of problem, 143 usage of, persuading factors, 149, 151f “Fintech in India – Opportunities and Challenges,” 144 “FinTech phenomenon: antecedents of financial innovation perceived by the popular press,” 144 First call resolution (FCR) rates, 309 FirstGiving, 68 Fisdom, 366 Five-factor model (FFM), 254–260 agreeableness, 254, 258–259 conscientiousness, 254, 256–257 extroversion, 254, 257–258 neuroticism, 254, 259–260 openness to experience, 254–255 Focus Group Discussion (FGD) survey, 177–179, 180, 183, 186 Followers (investors), 23

426  Index FOMO (fear-of-missing-out), 193, 198–199, 210, 216 Fraud deception capacities, 43 Freemium model, business model of Super Apps, 390–391 Free model, business model of Super Apps, 390 Freight transportation, application of cryptocurrencies, 226 Fuel a Dream, 68 Fund-based robo-advisor, 366 Fundraising, application of cryptocurrencies, 224–226 Future Advisor, 357–358 Fuzzy-TOPSIS hybrid analytics framework, 222 Gambling addictions, 197–198 features of, 214 Gamification of Fintech services, 123–124 Garanti BBVA, Ugi, 315 GARCH models, 237 Gated recurrence units (GRUs), 221, 238, 239 Gemini, 327 Gender Independent samples t-test for, 201, 206t–208t, 209–210 trading in cryptocurrencies, 200–201, 205 General Data Protection Regulation (GDPR), 409t Generalized regression neural networks (GRNNs), 238 Genetic algorithm, multi-population, 279 GFI (Goodness of Fit Index), 378 GIC of Singapore, 66 Gini, 68 GiveForward, 68

GJRGARCH model, 237 Global Digital Payments Transactional value, 44 Global financial crisis, 15, 62 Global Fin-tech Adoption Index, 400 “Global Retail Banking 2021: The Front-to-Back Digital Retail Bank,” 309 Global Robo-Advisor Market, categories, 361–362 Goal(s) integrated, 371–372 planning, 371 setting, 371 GoFundMe, 68, 327 Go-Jek, 396, 399 Goldman Sachs, 36, 65, 404 Goodness of Fit Adjusted Index (AGFI), 378 Goodness of Fit Index (GFI), 378 Google, 159t, 316, 329, 334, 370, 396, 410 Google Assistant, 304, 305, 317 Google Home, 304 Google Map, 125 Google Pay, 145, 149f, 158, 159t, 174, 175, 327 Google Payment Corp., 65 Google Pay Send, 9 Google Play, 384 Google Wallet, 62, 67 GoPay, 123 Grab, 388, 394–395, 397, 399 Grab Food, 394 Grab Holdings Inc., 394 Grab Pay, 394 GrabTaxi, 394, 395 Graphical user interface (GUI), 334–335 GRNNs (generalized regression neural networks), 238 Groww, 66, 148f, 160

Index  427 GRUs (gated recurrence units), 221, 238, 239 GUI (graphical user interface), 334–335 Haabari, 403 Hacker attempts, 26 Hacking, data, 184 Hang Seng Bank in Hong Kong, 370 Hanson Robotics, 37 Harbus, The, 199 Hardware specifications, super apps, 397 Harman’s single factor test for CMV, 116 Haro (“Help; Note; It Responds”), 370 HashCash, 224 Hash functions, cryptographic, 235 HDFC, 370 Hedonic motivation of customers, 114, 115, 116, 120, 123, 124 customer satisfaction in Fintech services, 108 literature review, 111 TAM model, 109–110 Hefei Science and Technology Rural Commercial Bank, 330 Herfindahl–Hirschman Index (HHI), 407–408 High-frequency trading (HFT), 354 Hindsight bias, 258 Home mining, 235, 236 Hosted mining, 235, 236 Host mining, 235 HSBC bank, 158, 159t Hybrid approach, cryptocurrency mining using, 234–236 mining strategies, 235–236 overview, 234–235 Hyperledger, 231

IBM Corporation, 65 IBM Hyperledger, 229 ICICIBank, 159t ICT (information and communication technology) in financial intermediation, 16 ICUF. see Willingness of customers to use Fin-Tech (ICUF) services IFSC codes, 370 IGARCH model, 237 Image augmentation approach, 286, 288–289 Image data generation, 286, 288–289 Image dilation, 285, 286f ImageNet, 278, 295 Improved decision making, 42–43 IMPS (immediate payment services), 73 Independent Reserve, The, 196 Independent Samples t-test, 193, 200, 201, 205 for education levels, 201, 210, 211t–213t, 214 for gender, 201, 206t–208t, 209–210 for retail investors vs. investment advisors, 202t–204t India banking sector development path, 139 evolution, 138 CBDC, 175 Central bank of, 158, 159t crypto-trade in. see Crypto-trade in India electronic payment systems in, 73, 159t, 160, 175, 182 fin-tech business, worth, 139 headquarters, 139 FinTech adoption rate in, 108–109 Fin-tech trends in, 159

428  Index future of crypto currencies In, 263, 266t investment sector evolution, 138 RBI, 175, 408 robo-advisors in, 370–371 SBI, 370, 404 Indian banking sectors, Fin-tech for. see Banking, analytical study of Fin-Tech in Indian Crypto-Tax Laws, 205, 215 Indian Fintech industry, 65 Indian perspective, growth of Fintech, 65–66 Indian Unified Payment interface (UPI), 66 Indiegogo, 68 Indonesia, Fintech services, 109, 111, 116, 120, 123, 124, 128, 394, 404 Indus Assist, 370–371 IndusInd Bank, 370–371 Industry 4.0, 63 Indwealth, 373 INDwealth, 366 Information and communication technology (ICT) in financial intermediation, 16 innovations in, 63 Information technology with financial services, 16 Initial coin offerings (ICOs), 224, 226 Innovation diffusion theory, 78 Innovativeness, customer, 110–111 Instrument development, 335–336 Insurance Industry Data Repository, 360 Insurance(s) apps, 148, 150f financial advice and, 66–67 industry AI, 52–53 market in London, 360 services model, 69 subsegment, 24 Insurance Technology (InsurTech), 65

Insurtech companies, 327 InsurTechs, 24 Integration platform as a service (iPaaS), 41 Integration software as a service (iSaaS) package, 41 Internet banking, 174, 175 Internet of Things (IoT), 9, 71, 343 advisory services using, 5 key digitalization technology, 19 Investment Advisors, 193, 199, 200–201 defined, 194–195 Independent samples t-test for, 202t–204t Retail Investors vs., 201–205 Investment apps, 145, 146, 148f Investment decision accountability of individuals, 252 behavioural factors on, 196 cognitive & emotional factors on, 196 demographic factors, 196 psychological factors, 196 push from social-media or peers, 210 with respect to gender, 201, 206t–208t, 209–210 retail investors vs. investment advisors, 200–201, 202t–204t, 205 sentiments driving. see Crypto-trade in India Investments application of cryptocurrencies, 224–226 in cryptos, personality on savings and. see Personality on savings and investment in cryptos Investors (followers), 23 financial habits of, 196 sentiment driving crypto-trade in India. see Crypto-trade in India investtech, 5

Index  429 IoT (Internet of Things), 9, 71, 343 advisory services using, 5 key digitalization technology, 19 iPaaS (integration platform as a service), 41 Irritability, 259 iSaaS (integration software as a service) package, 41 Jerry best insurance, 150f Jio Money, 175 JP Morgan Chase, 176 Jumia Pay, 403 Kakao, 396 KEYA (Kotak Mahindra Bank), 305, 314 Key performance indicators (KPIs), 126 Kickstarter, 68, 327 Kite, 148f Know Your Customer (KYC), 409t Kotak Mahindra Bank (KEYA), 305, 314 KPMG report, 65 Kuvera, 366 Label encoding, defined, 286 Ladder, 69 Leaking, data, 184 Lehman Brothers, 357 Lending & AI-based credit analysis, 46–48 Lending apps, 145, 147f Lending Club, 69 LIC, 150f Likert scale, 116, 335, 336, 338 Linkaja, 123 LinkedIn, 47 Liquidity, 352 Litecoin, 92, 97 Literacy, financial, 175, 180–181, 254 Loan processing, steps, 139

Long-short term memory (LSTM) network, 238, 279 Loss given default (LGD), 46 Lottery players, 199 Loyalty customer, 399 of end-users, 77, 78, 79, 82 increase, 311–312 LSTM (long-short term memory) network, 238, 279 Machine intellects, 37 Machine intelligence, 37 Machine learning (ML), 355 assistive technologies in, 238 in banking, 36, 46 FinTech using, 5, 14, 17 portfolio management, 48–49 robot financial advisors estate planning, 51 tax planning, 50–51 wealth management model, 67, 68 Machines, rise of, 352–353 Magna, 69 Makara, 364 Malaysia Fintech services, 109, 112, 116, 120, 128 voice bot assistance in banking industry. see Voice bot assistance in banking industry Malaysia Digital Economy Corporation (MDEC), 109 Market concentration, risk due to Super Apps in financial system, 407–408 Marketmojo, 366–367 Market Place Model, 391 Market Screener, 44 Market space and business models, Super App, 391–396 Alipay, 393–394 Grab, 394–395 other players, 396

430  Index Paytm, 395–396 Tata Neu, 396 WeChat/Weixin, 391–392 MDS (multi dimensional scaling), 260–261, 263, 266 Measures for Protection of Financial Consumer Rights and Interests, 2020, 409t Mediation, 352 Melancholy, 259 Mellow, 68 Message Digest 5 (MD5), 221 Micro, Small, and Medium Enterprises (MSME), 330 Microfinance, 327 Microservices architecture, Super Apps, 389–390 Microsoft, 39, 316 Mint, 357 ML. see Machine learning (ML) MLR (multiple linear regression), 150, 152–153, 163, 166 M2M (Machine to machine), 353 Mobike, 392 mobikwik, 149f Mobile banking, 46, 74, 107, 174 app, 72, 112, 327–328, 331 Mobile-based Super Apps, 387 Mobile money adoption of, 18 development, 108 MobileNet, 279, 293, 295–296 Mobile payment (m-payment), 22, 23, 66–67, 327 apps, 60, 327 customer satisfaction level, 107 customers’ satisfaction, 111 Fintech advancements of, 63 Powering Mobile Payments, 176 security measures of using, 81 services, 14, 106, 329 Mobile trading, 66–67 Mobile wallet platforms, 226

Modern portfolio theory (MPT), 365 Modular architecture, Super Apps, 388, 389 Monefy, 68 Monetary Authority of Singapore, 176 Money, defined, 175 Money more, 147f Money tap, 147f Moneyview, 68, 147f Monolithic architecture, Super Apps, 388 Monzo, 386 Mood swings, 259 Motif and Folio, 68 m-payment. see Mobile payment (m-payment) M_Pesa, 403 MPT (modern portfolio theory), 365 Multi dimensional scaling (MDS), 260–261, 263, 266 Multi-Leader Multi-Follower Stackelberg Game Model, 236 Multiple linear regression (MLR), 150, 152–153, 163, 166 Multiple regression tests, 377–379 Multi-population genetic algorithm, 279 Multi Variant Regression Model, 330, 334 Music industry, 228 Mutual funds and ETFs, 372 Mutualization, defined, 241 NASDAQ, 62 National Stock Exchange (NSE), 159t Natural Language Generation (NLG), 306 Natural language processing (NLP), 238, 305, 306 Natural Language Understanding (NLU), 306 Navi Technologies, 66

Index  431 Nearly short-term memory, 221 NEFT, 174 Net banking, 175 Netflix, 308 Neu Coins, 396 Neu Pass, 396 Neural networks (NNs), 221 -based algorithms, 279 CNNs. see Convolutional neural networks (CNNs) fully connected layer, 281 RNNs. see Recurrent neural networks (RNNs) text from images using, 278 Neuroticism, 254, 259–260, 267 NFI (Normal Fit index), 378 NIC, 150f Nigeria, Fintech services, 111, 116, 120, 128, 175, 195 NITI Aayog, 160 NLP (natural language processing), 238, 305, 306 Normal Fit index (NFI), 378 Nottingham Building Society, 8 Null Hypothesis, 205, 210, 214 Nutmeg, 358, 361 NXT, 261, 268 Odele, 50–51 Of Business, 160 Offline mode/features, 400 Oleg, Tinkoff Bank, 315 Omni, 261, 268, 370 On Demand/Subscription Model, 390–391 One Hot Encoding approach, 286 Online banking, 74 Online gambling, 197–198 Online shopping, 231, 316 Online transactions, 76 Openness to experience, 254–255 Optimal Litecoin model, 237 OPUS, 228

Oracle, 65 Overconfidence, 257 conscientiousness and, 256 in Tehran investors, 258 OVO, 123 Parity wallet, 2017 attack on, 223 Paul, Livea Rose, 145 Payment(s) apps, 147, 149f business models, 67 contactless payment methods, 76 digital, 66–67 electronic payment systems in India, 73, 159t, 160, 175, 182 IMPS, 73 mobile. see Mobile payment (m-payment) substitute payment methods subsegment, 23–24 systems, P2P, 237 technology on, 44–46 UPI. see Unified Payments Interface (UPI) PayPal, 9, 149f, 159t, 327, 329, 396 Paypal Holdings Inc., 65 Paytm, 66, 145, 158, 174, 175, 185, 395–396, 397, 403, 407 Paytm Money, 148f, 373 Paytm Razor Pay, 160 Paytm Wallet, 395 Peak, 42–43 Peer-to-peer (P2P) electronic cash system, 234 lending model, 66–67, 68–69, 123, 326, 327 network, 235 payment systems, 237 sharing activities, 242 transactions, 314 Pentech Ventures, 361 PEOU. see Perceived ease of use (PEOU)

432  Index Perceived ease of use (PEOU), 78, 79, 80, 166, 330, 332, 335 of crypto currencies, 263, 264t–265t on customer satisfaction, 107, 108, 121, 124, 127 dimensions, TAM and, 109 on ICUF services, 168 literature review, 112–113 outcome of EFA, 166t on PU, 230 variables depiction in exploration model, 164t Perceived financial literacy, 377 Perceived gain, defined, 375 Perceived risk (PR), 82, 375 toward usage of Fintech, 333–334, 335, 336, 338–340, 343–344 Perceived usefulness (PU), 78, 79–81, 107, 108, 127, 330 dimensions, TAM and, 109 literature review, 111–112 outcome of EFA, 166t toward usage of Fintech, 332, 335, 336, 338–341, 344–345 variables depiction in exploration model, 164t Perceived utility (PU) of Fin-Tech services, 157–158, 161 on ICUF services, 168 Perceived value (PU), PEoU and, 230 Personal Capital, 360, 363 Personal financial management (PFM), 23 Personality on savings and investment in cryptos discussion, 268–269 literature review, 253–260 agreeableness, 254, 258–259 conscientiousness, 254, 256–257 extroversion, 254, 257–258 neuroticism, 254, 259–260 openness to experience, 254–255 methodolgy, 260–268 analysis and findings, 261–263

future of crypto currencies In India, 263, 266t objectives of savings, 263, 266f options of savings, 266–267 personality and preference to invest, 267–268 willingness to invest in cryptocurrencies, 263, 264t–265t objectives of research, 260 overview, 252–253 Personality traits, behavioural biases and, 258 Petro, 176 Philippines, Fintech services, 116, 120, 128, 394 Phishing, 26 Phishing attack, 399 PhonePe, 145, 149f, 158, 174, 175, 185 Pine Labs, 66, 160 Pintec Technology, 358 Planto, 68 Plastic money, 252 Policy Bazaar, 66, 160 Portfolio management, 48–49 Powering Mobile Payments, 176 Power of data and speed of responsiveness, 406 PR (perceived risk), 82, 375 toward usage of Fintech, 333–334, 335, 336, 338–340, 343–344 Presentation layer, architecture of Super App, 387 Pre-trained model methodology, 282–283 Price exchange, 352 Principle components analysis, 261 Privacy, data security and, 74, 398 Probability of default (PD), 46 Product and service offerings, size & speed of, 406 Project funding, 93–94 Proof of stake (PoS), 231, 261, 268

Index  433 Proof-of-Work (PoW), 223, 235, 261, 268 Prosper, 69 PU. see Perceived usefulness (PU) Publication, use of cryptocurrencies, 227 QR Code, 182 Quirion, 358 Randomness bias, 258 Rappi, 396 RateSetter, 69 Razor Pay, 66 Real estate, cryptocurrencies for, 228 Rectified Linear Units (ReLU) correction layer, 281 Recurrent neural networks (RNNs), 238, 239, 279 Reddit, 226 Redistribution, defined, 241 Regressand, 152 Regressors, 152 Regret, 199 Regulation on Nonbanking Payment Agencies by PBOC, 409t Regulation Technology (RegTech), 65, 66 Regulatory law, fintech ecosystem, 74 Regulatory standards, support (RS) for, 232 ReLu, 291 Representativeness, 196 Research questions objectives and, 76–77 statement of problem and, 75–76 Reserve Bank of India (RBI), 175, 408 Reset gate (Rt), 239 Respondents, demographic profile of, 336–337 Retail banks, accelerated digitalization of, 309 Retail Investors, 193, 200–201

defined, 194 Independent samples t-test for, 202t–204t Investment Advisors vs., 201–205 Revenue model of Alipay, 393, 394 of Grab, 395 of Paytm, 395–396 of WeChat, 392 Reward-based crowd funding, 68 Ripple, 92, 93, 97 Risks, Super Apps in financial system, 406–408 disintermediation of banks from customer, 408 financial stability, 407 market concentration, 407–408 regulatory measures to mitigate, 408, 409t Risk transfer, 352 RMSprop optimizer, 295 RNNs (recurrent neural networks), 238, 239, 279 Robinhood, 69, 327 Robinhood Markets Inc., 65 Robo-advisor(s), 23, 66–67, 114 acceptance of, 374–379 collection of data, 377 earlier research studies, 375–376 effort expectancy, 376 facilitating conditions, 376 hypotheses testing, 377–379 methodology and hypothesis, 376–377 perceived financial literacy, 377 perceived risk, 375 performance expectancy of, 376 social influence, 376 tendency to relay on technology, 377 theoretical background and research propositions, 374–375 trust, 375, 376 visual usage, 375

434  Index advisor segment based, 366–367 based on technical aptitudes, 365–366 benefits of, 372–373 automated rebalance, 373 comprehensive services, 372 easy to access, 372 efficiency, 373 emotional investing, 373 low cost, 373 neutrality, 372 tracking investment priorities, 372–373 Betterment, 148f, 327, 357–358, 360, 361, 363–364, 367–368 brief history, 357–358 chatbots, 355–356 conversational, 355 costs, 371 ease of access, 371 estate planning, 51 FA vs., 359 fees and minimum investments, understanding, 371 global share, 360–362 historic account of, 358–359 human advisers, replacement, 374 in India, 370–371 integrated goals, 371–372 limitations of, 373–374 in market, 359–364 need, 363–364 overview, 351–355, 356 points to be consider while selection of, 371–372 revenue source, 366 tax planning, 50–51 top robot advisors, 367–371 Ally Invest Managed Portfolios, 369 Betterment, 367–368 Charles Schwab Intelligent Portfolios, 368 Ellevest, 327, 358, 368–369

Fidelity, 369 SigFig, 368 SoFi, 369 TD Ameritrade, 369 Wealthfront, 68, 357–358, 360, 368 Wealthsimple, 369–370 types, 365–367 comprehensive, 365–366 equity based, 366–367 fund-based, 366 scope based advisors, 367 simplistic, 365 wealth management advisor, 67, 68 working process, 364–365 analysing proposals, 365 appropriate investment option, 365 automated rebalance of portfolio, 365 confirmation/rejection of option, 365 creation of account & questionnaire, 364 Robo advisory market, 362–363 Robo Consultants, key characteristic of, 374–375 Robotic Process Automation (RPA), 40–41, 360 Robotics, 5 RocketHub, 68 RouteMap, usage of, 125 Royalties, 228 RPA (Robotic Process Automation), 40–41, 360 Sadness, 259 Sakuku, 123 Salesforce research, 76 Sampling, awareness and acceptance of CBDC, 177–179 Sampling methodology crypto-trade in India, 200–201

Index  435 customers’ satisfaction to adopt Fintech services, 115, 116 Samsung Bixby, 305 Samsung Pay, 67 Sanctions violations, 176 ‘Sand Dollar,’ CBDC, 175, 176 Santandar (UK), 314 Savings. see also Personality on savings and investment in cryptos objectives of, 263, 266f options of, 266–267 SBI Intelligent Assistant (SIA), 370 SBI Life, 150f Scope based advisors, 367 Scripbox, 366, 373 Secure Hash Algorithm 2 (SHA-2), 221, 235 Security breach, 26 data, 74 deep neural network in. see CAPTCHA model Seedrs, 68 Segmentation of images, 285, 286, 287f, 288t Self-efficacy, technology, 113–114, 126 SEM. see Structural equation modeling (SEM) analysis Sensible usability (SU), 157–158, 161–162 Sentiments, for driving investments in cryptocurrencies. see also Cryptotrade in India finance and, 195–196 global acceptability of cryptocurrencies, 209 graduate and post-graduate investors, 210–214 male and females investors, 205–210 of Retail Investors and Investment Advisors, 201–205 for safety of investments, 210, 214 taxation levels, 214

SGD optimizer, 295 SigFig, 368 Simplistic robo-advisors, 365 Singularity.io5, 37 Siri (Apple), 304, 305, 317, 371 Slack, 41 Slice, 160 Smallcase, 366–367 Smart Bank app, 314 Smart contracts, 227, 228, 229 Smartphones, 5, 14, 21, 74 banking, 107, 111, 114 Smart PLS software, 3 Social exchange theory, 375 Social impact, 165t, 166t Social implications, 157–158, 166 WUF services and, 162 Social influence (SI), 80–81, 233, 376 on ICUF services, 169 Social media developers, 70 integration with, 400 Social networking sites, 334 Social norms (SN), 78, 79, 80–81 Society for worldwide interbank (SWIFT), 62 SoFi, 69, 369 Sophia, 37 Speech recognition, 238 Speech to Text (STT) engine, 305–306 Speed financial transactions, 73 of navigation/response, 399 Sports betting, 198 SPSS (Statistical Package for Social Sciences) Software, 200, 260, 263, 266, 334 Square, 327, 396 Square Cash, 67 Stable coins, 174 Standard Federal Credit Union, 8, 9 State Bank of India (SBI), 370, 404 Statista, 384

436  Index Statistical Package for Social Sciences (SPSS) Software, 200, 260, 263, 266, 334 Stochastic volatility models (SV), 237 Stock market, cryptocurrencies for, 228 Stock trading apps, 327 Stratified sampling technique, 193 Structural equation modeling (SEM) analysis, 3, 150, 154, 258, 259 customers’ satisfaction and intention to adopt Fintech, 120–122 Technology Rural Commercial Bank, 330 using multiple regression techniques, 137–138, 377–378 SU (sensible usability), 157–158, 161–162 Substitute payment methods subsegment, 23–24 Super Apps from app to, 385, 386f architecture and design of, 386–390 business logic layer, 387 data layer, 387 microservices architecture, 389–390 modular architecture, 388, 389 monolithic architecture, 388 presentation layer, 387 benefits, in financial services sector, 405–406 economies of scale & cost of financial intermediation, 405–406 power of data and speed of responsiveness, 406 size & speed of product and service offerings, 406 business models of, 390–391 freemium model, 390–391 free model, 390 cost of operating and maintaining, 386–387

defined, 383–384 factors contributing to success of, 397–400 bundling of products and pricing, 400 customer loyalty, 399 data security and privacy, 398 ease of downloading & on-boarding, 398 hardware agnostic, 397 inclusivity, 398–399 integration with social media, 400 offline mode/features, 400 optimization with mobile device, 397 speed of navigation/response, 399 tough to crack/safe, 399 user-friendliness, 397–398 in financial inclusion, 403–404 in financial services segment, 400–403 in financial system, risks, 406–408 disintermediation of banks from customer, 408 financial stability, 407 market concentration, 407–408 future of, 408, 410 market space and business models, 391–396 Alipay, 393–394 Grab, 394–395 other players, 396 Paytm, 395–396 Tata Neu, 396 WeChat/Weixin, 391–392 mobile-based, 387 overview, 383–385 regulatory measures to mitigate risks, 408, 409t vertically integrated app vs., 385, 386 Supersplit, 68

Index  437 Supply chain finance (SCF) assets, 126 Support (RS) for regulatory standards, 232 Support Vector Machine (SVM), 46 Sureify, 69 Sustainable development goals (SDGs) index, 157, 163 SwissBorg, 229 SyndicateRoom, 68 System quality, 113, 126, 127 TAM. see Technology Acceptance Model (TAM) TATA Consultancy Service Limited, 65 Tata Group, 396 Tauro Wealth, 367 Tax laws, Indian Crypto, 205, 215 Tax planning helper, 50–51 TD Ameritrade, 369 Technology Acceptance Model (TAM), 77–79, 108, 127 acceptance of digital payments using, 185 financial transaction using blockchain technology, 230 in fintech mobile applications for banking BI toward usage of Fintech, 333, 335, 336, 338–340, 342–343, 344 demographic profile of respondents, 336–337 discussion, 344–346 factors influencing Fintech under TAM, 338–340 hypotheses of study, 332–334 instrument development, 335–336 methods and measures, 334–336 overview, 326–334 perceived risk toward usage of Fintech, 333–334

PR toward usage of Fintech, 333–334, 335, 336, 338–340, 343–344 PU toward usage of Fintech, 332, 340–341, 344–345 research objectives, 331–332 results, 336–344 significance of study, 331 suggestions for future research, 345–346 usage of Fintech, 340–344 user acceptance testing, 329–330 literature review, 109–110 Technology innovation in financial sector, 63–66 growth of Fintech, global perspective, 63–65 growth of Fintech, Indian perspective, 65–66 Technology self-efficacy, 113–114, 126 Temasek, 176 Tencent Holdings Ltd, 65, 391, 407 Tesla, 392 Tether, 96, 97 TEU ERC20 Utility coin, 226 Text to Speech (TTS) engine, 306 Tez, 159t Theory of Reasoned Action (TRA), 78, 230, 332 300 cubits, 226 TIME magazine, 352 Tinkoff Bank, Oleg, 315 Tokens of Success Life, 227 TRA (Theory of Reasoned Action), 78, 230, 332 Trained financial planners, 228–229 Training accuracy vs. validation accuracy, 297–300 Training loss vs. validation loss, 297–300 Transactions security and control, crypto currency, 263, 264t–265t, 268 Transfer learning models, 278, 281–283

438  Index creating model approach, 282 pre-trained model methodology, 282–283 Transparency, fintech solutions for payments, 72, 73 Travel, application of cryptocurrencies, 226 Trust, 375, 376–377 to adopt Fintech, 78, 79, 81–82, 162 consumer’s, 230–231 customer, 53, 164t, 166t, 399 digital currency mechanisms, 184–185 Trustworthiness of crypto investments, 209, 216 Twitter, 410 “Tyranny of Convenience,” 316 Uber, 38–39, 394 UBS, 36 Ugi, Garanti BBVA, 315 Ultra smart AI, 37–38 Unicorns, Fin-tech, 160 Unified Payments Interface (UPI) acceptance of, 174, 182 electronic payment systems in India, 73, 159t, 160, 175, 182 key regulatory initiatives, 409t purpose of digitization, 183 Unified theory of acceptance and use of technology (UTAUT), 78, 330, 375, 376 UNUS SED LEO, 97 Update gate (Ut), 239 UPI. see Unified Payments Interface (UPI) Upstocx, 148f, 160 User acceptance process, 329–330 User experience (UX), 387, 397–398 User-friendliness of super apps, 397–398

User interface (UI), 387 User retention, focus on, 74–75 UTAUT (unified theory of acceptance and use of technology), 78, 330, 375, 376 Validation accuracy, training accuracy vs., 297–300 Validation loss, training loss vs., 297–300 Vanguard, 358, 361 Vanishing Gradient Problem in CNN, 291 Vedhantu, 66 Venezuela, petro, 176 Venmo, 67, 327 Venture Scanner, 21 Vertically integrated app, Super App vs., 385, 386 VGG16 model, 279, 297–300 Virtual simulation intelligence, 42 Voice bot assistance in banking industry benefits from bank’s perspective, 309–311 from customer’s perspective, 311–312 call to action, 315–316 characteristics of voice bot, 307–308 components, 307f defined, 305–315 descriptive analysis, 318–321 discussion, 321–322 literature review, 316–317 opportunities for voice bots, 312–313 overview, 303–304 popularity, 308–309 problem statement, 304–305 research methodology, 317–318 use cases, 313–315

Index  439 Ally Assist (Ally bank), 314 Erica (Bank of America), 313–314 KEYA, Kotak Mahindra Bank, 314 Oleg, Tinkoff Bank, 315 Santandar (UK), 314 Ugi, Garanti BBVA, 315 Volatility, 222 Cboe Volatility Index (VIX), 94 price assets’, 126 Bitcoin, 23, 197, 238 stochastic volatility models, 237 Wacai, 361 Wallet apps, 327 Wall Street, 357 Walmart Inc, 158, 396 WAMCS (weighted and attentive memory channels), 240 CNNs with, 238–239 attentive memory module, 239 convolution & pooling module, 239 Warren, 196 waves, 261, 268 Wealthfront, 68, 357–358, 360, 368 Wealth management, 48–51, 313, 362 compliance management, 49–50 model, 67–68 portfolio management, 48–49 robo-advisory, 363 estate planning, 51 tax planning, 50–51 Wealth Management (WealthTech), 65 Wealthsimple, 369–370 wealthtech, 5 WeChat, 38–39, 384, 391–392, 393, 394, 396, 397, 399, 400, 407 WeChat Pay, 392

Weighted and attentive memory channels (WAMCS), 240 CNNs with, 238–239 attentive memory module, 239 convolution & pooling module, 239 Weixin, 391–392 WhatsApp, 38–39, 370, 396, 403 Willingness of customers to use FinTech (ICUF) services CU in Fin-Tech services on, 168 PEU of Fin-Tech services on, 168 PU of Fin-Tech services on, 168 SI on, 169 Willingness to use Fin-Tech (WUF) services, 161–162 World Health organisation (WHO), 82 World Trade Organisation (WTO), 76 Worry, 259 WUF (Willingness to use Fin-Tech) services, 161–162 Xchanging, 360 Xoom, 69 Yes Bank, 370 YES ROBOT, 370 Yono, 404 ZAML (Zest Automated Machine Learning), 47 Zebra, The, 69 Zerodha, 160 Zest Automated Machine Learning (ZAML), 47 Zest Finance, 47 Zeta, 66, 160 Zimrii, 228 Zoho, 160 Zopra, 69

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